Multimodal Intelligent Sensing in Modern Applications:
Discover the design, implementation, and analytical techniques for multi-modal intelligent sensing in this cutting-edge text The Internet of Things (IoT) is becoming ever more comprehensively integrated into everyday life. The intelligent systems that power smart technologies rely on increasingly so...
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WILEY-VCH
2024
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Zusammenfassung: | Discover the design, implementation, and analytical techniques for multi-modal intelligent sensing in this cutting-edge text The Internet of Things (IoT) is becoming ever more comprehensively integrated into everyday life. The intelligent systems that power smart technologies rely on increasingly sophisticated sensors in order to monitor inputs and respond dynamically. Multi-modal sensing offers enormous benefits for these technologies, but also comes with greater challenges; it has never been more essential to offer energy-efficient, reliable, interference-free sensing systems for use with the modern Internet of Things. Multimodal Intelligent Sensing in Modern Applications provides an introduction to systems which incorporate multiple sensors to produce situational awareness and process inputs. It is divided into three parts—physical design aspects, data acquisition and analysis techniques, and security and energy challenges—which together cover all the major topics in multi-modal sensing. The result is an indispensable volume for engineers and other professionals looking to design the smart devices of the future. Multimodal Intelligent Sensing in Modern Applications readers will also find: - Contributions from multidisciplinary contributors in wireless communications, signal processing, and sensor design- Coverage of both software and hardware solutions to sensing challenges- Detailed treatment of advanced topics such as efficient deployment, data fusion, machine learning, and moreMultimodal Intelligent Sensing in Modern Applications is ideal for experienced engineers and designers who need to apply their skills to Internet of Things and 5G/6G networks. It can also act as an introductory text for graduate researchers into understanding the background, design, and implementation of various sensor types and data analytics tools |
Beschreibung: | Discover the design, implementation, and analytical techniques for multi-modal intelligent sensing in this cutting-edge text The Internet of Things (IoT) is becoming ever more comprehensively integrated into everyday life. The intelligent systems that power smart technologies rely on increasingly sophisticated sensors in order to monitor inputs and respond dynamically. Multi-modal sensing offers enormous benefits for these technologies, but also comes with greater challenges; it has never been more essential to offer energy-efficient, reliable, interference-free sensing systems for use with the modern Internet of Things. Multimodal Intelligent Sensing in Modern Applications provides an introduction to systems which incorporate multiple sensors to produce situational awareness and process inputs. It is divided into three parts—physical design aspects, data acquisition and analysis techniques, and security and energy challenges—which together cover all the major topics in multi-modal sensing. The result is an indispensable volume for engineers and other professionals looking to design the smart devices of the future. Multimodal Intelligent Sensing in Modern Applications readers will also find: - Contributions from multidisciplinary contributors in wireless communications, signal processing, and sensor design- Coverage of both software and hardware solutions to sensing challenges- Detailed treatment of advanced topics such as efficient deployment, data fusion, machine learning, and moreMultimodal Intelligent Sensing in Modern Applications is ideal for experienced engineers and designers who need to apply their skills to Internet of Things and 5G/6G networks. It can also act as an introductory text for graduate researchers into understanding the background, design, and implementation of various sensor types and data analytics tools Contents; About the Editors xv; List of Contributors xix; Preface xxiii; 1 Advances in Multi-modal Intelligent Sensing 1; Masood Ur Rehman, Muhammad Ali Jamshed, - and Tahera Kalsoom; 1.1 Multi-modal Intelligent Sensing 1; 1.2 Sensors for Multi-modal Intelligent Sensing 3; 1.2.1 Sensor Types 3; 1.2.2 Integration of Multiple Sensor Types for Enhanced Sensing Capabilities 5; 1.2.2.1 Advantages of Multiple Sensor Integration 5; 1.2.2.2 Key Considerations for Multiple Sensor Integration 6; 1.2.2.3 Concurrent Data Acquisition Methods 9; 1.2.2.4 Data Analysis Tools for Multi-modal Sensing 11; 1.2.2.5 Considerations for Data Fusion and Synchronization 13; 1.3 Applications of Multi-modal Intelligent Sensing 14; 1.3.1 Healthcare and Medical Monitoring 14; 1.3.2 Automotive and Transportation Systems 15; 1.3.3 Environmental Monitoring and Conservation 16; 1.3.4 Smart Cities and Infrastructure Management 17; 1.3.5 Industrial Automation 18; 1.4 Challenges and Opportunities in Multi-modal Sensing 18; 1.4.1 Data Security and Privacy 19; 1.4.2 Interoperability and Standardization 19; 1.4.3 Energy Efficiency and Power Management 20; 1.4.4 Coverage 21; 1.4.5 - Summary 21; References 22; 2 Antennas for Wireless Sensors 29; Abdul Jabbar, Muhammad Ali Jamshed, - and Masood Ur Rehman; 2.1 Wireless Sensors: Definition and Architecture 29; 2.1.1 Wireless Sensor Node Architecture 30; 2.1.2 Operating Systems 32; 2.1.3 Classification of Wireless Sensors 32; 2.2 Multi-modal Wireless Sensing 34; 2.3 Antennas: The Sensory Gateway for Wireless Sensors 35; 2.4 Fundamental Antenna Parameters 36; 2.4.1 Bandwidth and Operating Frequency 36; 2.4.2 Gain 37; 2.4.3 Radiation Pattern 37; 2.4.4 Polarization 38; 2.5 Key Operating Frequency Bands for Sensing Antennas 39; 2.6 Fabrication Methods for Sensing Antennas 40; 2.6.1 Printed Circuit Board (PCB) Antennas 40; 2.6.2 On-Chip and Integrated Antenna Fabrication 41; 2.6.3 Stitching and Embroidery for Flexible Textile Antennas 41; 2.7 Antenna Types for Wireless Sensing Networks 42; 2.7.1 Flexible Antennas 43; 2.7.2 Omnidirectional Antennas 45; 2.7.3 Directional Antennas 46; 2.8 Advantages of Electronic Beamsteering Antennas in Sensing Systems 46; 2.9 Summary 49; References 49; 3 Sensor Design for Multimodal - Environmental Monitoring 55; Muhammad Ali Jamshed, Bushra Haq, Syed Ahmed Shah, Kamran Ali, Qammer H. - Abbasi, Mumraiz Khan Kasi, and Masood Ur Rehman; 3.1 Environment and Forests 56; 3.2 Methods to Combat Deforestation 56; 3.2.1 Combating Deforestation Using Wireless Sensor Networks 57; 3.2.2 Sensor Types for Combating Deforestation 58; 3.3 Design of a WSN to Combat Deforestation 59; 3.3.1 Stage 1: System Requirements 59; 3.3.1.1 Key Performance Indicators 62; 3.3.2 Stage 2: Architecture 63; 3.3.3 Stage 3: System Implementation 65; 3.3.3.1 Type of Sensors 65; 3.3.3.2 Processing Boards 66; 3.3.3.3 Communication Modules 67; 3.3.3.4 Batteries 67; 3.3.3.5 Energy Harvesting Circuit and Equipment 69; 3.3.3.6 Weather Protection 70; 3.3.3.7 Wireless Communication Link 71; 3.3.3.8 Data Processing Algorithms 74; 3.4 Summary 76; References 76; 4 Wireless Sensors for Multi-modal Health Monitoring 81; Nadeem Ajum, Shagufta Iftikhar, Tahera Kalsoom, - and Masood Ur Rehman; 4.1 Wearable Sensors 82; 4.1.1 Electrocardiography (ECG) Sensors 83; 4.1.2 Electroencephalography (EEG) Sensors 83; 4.1.3 Electrooculography (EOG) Sensors 84; 4.1.4 Electrodermal Activity (EDA) Sensors 86; 4.1.5 Respiratory (RESP) Sensors 86; 4.1.6 Motion Sensors 86; 4.1.7 Temperature (TEMP) Sensors 87; 4.1.8 Pressure Sensors 87; 4.1.9 Hydration Sensors 88; 4.1.10 Lactate Sensors 88; 4.1.11 Photoplethysmography (PPG) Sensors 89; 4.1.12 Continuous Glucose Monitoring (CGM) Sensors 89; 4.2 Flexible Sensors 89; 4.3 Multi-modal Healthcare Sensing Devices 90; 4.3.1 Wearable Sensing Devices for Healthcare 90; 4.3.1.1 Wearable Devices in Detection 90; 4.3.1.2 Wearable Devices in Monitoring 92; 4.3.1.3 Wearable Devices in Rehabilitation 93; 4.3.1.4 Wearable Devices in Personalized Medicine 94; 4.3.1.5 Wearable Devices in Skin Patches 94; 4.3.1.6 Wearable Devices for Body Fluid Monitoring 95; 4.3.1.7 Wearable Devices in Monitoring Body Temperature 96; 4.3.1.8 Wearable - Devices as Contact Lens 96; 4.3.1.9 Wearable Devices in Daily Use Objects 97; 4.3.2 Implantable Sensing Devices for Healthcare 97; 4.3.2.1 Implantable Cardioverter Defibrillators 98; 4.3.2.2 Bioinks and 3D Print Implants 98; 4.3.2.3 Deep Brain Stimulation 99; 4.3.2.4 Biosensor Tattoos 99; 4.4 AI Methods for Multi-modal Healthcare Systems 100; 4.4.1 Supervised Learning 100; 4.4.2 Unsupervised Learning 101; 4.4.3 Semi-supervised Learning 101; 4.4.4 Reinforcement Learning 102; 4.5 Summary 102; References 103; 5 Sensor Design for Industrial Automation 109; Abdul Jabbar, Tahera Kalsoom, - and Masood Ur Rehman; 5.1 Multimodal Sensing in Industrial Automation 109; 5.1.1 IIoT and Multimodal Sensing 111; 5.1.2 Advanced Robotics 113; 5.1.3 Big Data Analytics 114; 5.1.4 Cloud Computing 114; 5.1.5 Artificial Intelligence 115; 5.1.6 Augmented Reality 116; 5.2 Sensors for Realizing Industrial Automation 116; 5.2.1 RF Sensors 117; 5.2.2 Vision Sensors 118; 5.2.3 Localization and Tracking Sensors 119; 5.2.4 Infrared Sensors 119; 5.2.5 Proximity Sensors 119; 5.2.6 IMU Sensors 120; 5.2.7 Level Sensors 120; 5.2.8 Temperature Sensors 120; 5.2.9 Pressure Sensors 121; 5.3 Design Considerations for Effective Multimodal Industrial Automation 121; 5.3.1 Design of AI-Assisted Multimodal Sensing 122; 5.3.2 Design of Radar Sensing Networks 123; 5.3.2.1 Transmitter and Receiver Antennas 123; 5.3.2.2 Data Collection and Interface 123; 5.3.2.3 Signal Processing 124; 5.3.2.4 Housing and Enclosure 124; 5.4 Challenges and Opportunities of Multimodal Sensing in Industrial Automation 124; 5.5 - Summary 126; References 126; 6 Hybrid Neuromorphic-Federated Learning for Activity Recognition Using Multi-modal Wearable Sensors 133; Ahsan Raza Khan, Habib Ullah Manzoor, Fahad Ayaz, Muhammad Ali Imran, - and Ahmed Zoha; 6.1 Multi-modal Human Activity Recognition 134; 6.2 Machine Learning Methods in Multi-modal Human Activity Recognition 137; 6.2.1 Centralized Learning-based HAR Systems 137; 6.2.2 Federated Learning-based HAR Systems 138; 6.3 System Model 139; 6.3.1 Federated Learning Framework 140; 6.3.2 Spiking Neural Network 141; 6.3.3 Proposed S-LSTM Model 144; 6.4 Simulation Setup 146; 6.4.1 Dataset Description 146; 6.4.1.1 UCI Dataset 147; 6.4.1.2 Real-World Dataset 148; 6.4.2 Performance Metrics 149; 6.5 Results and Discussion 150; 6.5.1 UCI Results 151; 6.5.2 Real-World Dataset Results 154; 6.5.3 Energy Efficiency Comparison 157; 6.5.4 Personalized Model Comparison 159; 6.6 Summary 159; References 161; 7 Multi-modal Beam Prediction for Enhanced Beam Management in Drone Communication Networks 165; Iftikhar Ahmad, Ahsan Raza Khan, Rao Naveed Bin Rais, Muhammad Ali Imran, Sajjad Hussain, - and Ahmed Zoha; 7.1 Drone Communication 166; 7.2 Beam Management 167; 7.3 System Model 168; 7.3.1 Problem Formulation for Beam Prediction 170; 7.3.2 Proposed Stacked Vision-Assisted Beam Prediction Model 170; 7.4 Simulation and Analysis 171; 7.4.1 Description of the Dataset 173; 7.4.2 Configuration for Simulation 173; 7.4.2.1 YOLO-v5 Training Process 174; 7.4.3 Results and Analysis 175; 7.5 Summary 178; References 178; 8 Multi-modal-Sensing System for Detection and Tracking of Mind Wandering 181; Sara Khosravi, Haobo Li, Ahsan Raza Khan, Ahmed Zoha, - and Rami Ghannam; 8.1 Mind Wandering 182; 8.2 Multi-modal Wearable Systems for Mind-Wandering Detection and Monitoring 184; 8.2.1 Wearable Eye Trackers for Gaze Measurements 185; 8.2.2 Wearable GSR and PPG Sensors for Physiological Measurements 186; 8.3 Design of Multi-modal Wearable System 187; 8.3.1 Selection of Sensor 187; 8.3.2 Selection of Participant Groups and Testing Environment 188; 8.3.3 Data Collection Process 189; 8.3.4 Machine Learning and Multisensory Fusion 190; 8.4 Results and Discussion 194; 8.5 Summary 197; References 197; 9 Adaptive Secure Multi-modal Telehealth Patient-Monitoring System 201; Muhammad Hanif, Ehsan Ullah Munir, Muhammad Maaz Rehan, Saima Gulzar Ahmad, Tassawar Iqbal, Nasira Kirn, Kashif Ayyub, - and Naeem Ramzan; 9.1 Healthcare Systems 202; 9.1.1 Traditional Healthcare Systems 203; 9.1.2 Multi-modal Telehealth Systems 203; 9.2 Security in Healthcare Systems 205; 9.2.1 Prevailing Techniques for Secure Telehealth 205; 9.2.2 Challenges in Ensuring Healthcare Security 208; 9.2.3 Strategies to Enhance Healthcare Data Security 209; 9.2.4 Key Security Features for Telehealth Systems 210; 9.2.4.1 Encryption 210; 9.2.4.2 Authentication 211; 9.2.4.3 Access Control 211; 9.2.4.4 Audit Trails 211; 9.2.4.5 Data Integrity Checks 211; 9.2.4.6 Secure Communication Protocols 211; 9.2.4.7 Security Audits and Penetration Testing 211; 9.2.4.8 Cyber Resilience 212; 9.2.4.9 Zero-Trust-Based Micro-segmentation 212; 9.3 Blockchain-Powered ZTS for Enhanced Security of Telehealth Systems 213; 9.3.1 Zero-Trust Security 213; 9.3.2 Blockchain 214; 9.4 Cyber-resilient Telehealth-Enabled Patient Management System 217; 9.4.1 Assessment and Planning 218; 9.4.2 Infrastructure Setup 219; 9.4.3 Security Controls - Implementation 219; 9.4.4 Training and Awareness 219; 9.4.5 Advantages and Limitations 221; 9.5 Summary 222; References 222; 10 Advances in Multi-modal Remote Infant Monitoring Systems 227; Najia Saher, Omer Riaz, Muhammad Suleman, Dost Muhammad Khan, Nasira Kirn, Sana Ullah Jan, Rizwan Shahid, Hassan Rabah, and Naeem Ramzan; 10.1 Remote Patient Monitoring 228; 10.2 Remote Infant Monitoring (RIM) System 229; 10.2.1 Contactless Remote Patient Monitoring (RPM) Systems 230; 10.2.2 Contact-Based Remote Patient Monitoring (RPM) Systems 230; 10.3 Disease-Specific Remote Infant Monitoring Systems 232; 10.3.1 Respiration and Apnea Monitoring System 232; 10.3.1.1 Emerging Sensing Techniques for Respiratory Diseases 233; 10.3.2 Heart and Blood-Related Diseases Monitoring Systems 238; 10.3.2.1 Emerging Sensing Technique |
Umfang: | 320 Seiten |
ISBN: | 9781394257713 |
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500 | |a Discover the design, implementation, and analytical techniques for multi-modal intelligent sensing in this cutting-edge text The Internet of Things (IoT) is becoming ever more comprehensively integrated into everyday life. The intelligent systems that power smart technologies rely on increasingly sophisticated sensors in order to monitor inputs and respond dynamically. Multi-modal sensing offers enormous benefits for these technologies, but also comes with greater challenges; it has never been more essential to offer energy-efficient, reliable, interference-free sensing systems for use with the modern Internet of Things. Multimodal Intelligent Sensing in Modern Applications provides an introduction to systems which incorporate multiple sensors to produce situational awareness and process inputs. It is divided into three parts—physical design aspects, data acquisition and analysis techniques, and security and energy challenges—which together cover all the major topics in multi-modal sensing. The result is an indispensable volume for engineers and other professionals looking to design the smart devices of the future. Multimodal Intelligent Sensing in Modern Applications readers will also find: - Contributions from multidisciplinary contributors in wireless communications, signal processing, and sensor design- Coverage of both software and hardware solutions to sensing challenges- Detailed treatment of advanced topics such as efficient deployment, data fusion, machine learning, and moreMultimodal Intelligent Sensing in Modern Applications is ideal for experienced engineers and designers who need to apply their skills to Internet of Things and 5G/6G networks. It can also act as an introductory text for graduate researchers into understanding the background, design, and implementation of various sensor types and data analytics tools | ||
500 | |a Contents; About the Editors xv; List of Contributors xix; Preface xxiii; 1 Advances in Multi-modal Intelligent Sensing 1; Masood Ur Rehman, Muhammad Ali Jamshed, | ||
500 | |a - and Tahera Kalsoom; 1.1 Multi-modal Intelligent Sensing 1; 1.2 Sensors for Multi-modal Intelligent Sensing 3; 1.2.1 Sensor Types 3; 1.2.2 Integration of Multiple Sensor Types for Enhanced Sensing Capabilities 5; 1.2.2.1 Advantages of Multiple Sensor Integration 5; 1.2.2.2 Key Considerations for Multiple Sensor Integration 6; 1.2.2.3 Concurrent Data Acquisition Methods 9; 1.2.2.4 Data Analysis Tools for Multi-modal Sensing 11; 1.2.2.5 Considerations for Data Fusion and Synchronization 13; 1.3 Applications of Multi-modal Intelligent Sensing 14; 1.3.1 Healthcare and Medical Monitoring 14; 1.3.2 Automotive and Transportation Systems 15; 1.3.3 Environmental Monitoring and Conservation 16; 1.3.4 Smart Cities and Infrastructure Management 17; 1.3.5 Industrial Automation 18; 1.4 Challenges and Opportunities in Multi-modal Sensing 18; 1.4.1 Data Security and Privacy 19; 1.4.2 Interoperability and Standardization 19; 1.4.3 Energy Efficiency and Power Management 20; 1.4.4 Coverage 21; 1.4.5 | ||
500 | |a - Summary 21; References 22; 2 Antennas for Wireless Sensors 29; Abdul Jabbar, Muhammad Ali Jamshed, | ||
500 | |a - and Masood Ur Rehman; 2.1 Wireless Sensors: Definition and Architecture 29; 2.1.1 Wireless Sensor Node Architecture 30; 2.1.2 Operating Systems 32; 2.1.3 Classification of Wireless Sensors 32; 2.2 Multi-modal Wireless Sensing 34; 2.3 Antennas: The Sensory Gateway for Wireless Sensors 35; 2.4 Fundamental Antenna Parameters 36; 2.4.1 Bandwidth and Operating Frequency 36; 2.4.2 Gain 37; 2.4.3 Radiation Pattern 37; 2.4.4 Polarization 38; 2.5 Key Operating Frequency Bands for Sensing Antennas 39; 2.6 Fabrication Methods for Sensing Antennas 40; 2.6.1 Printed Circuit Board (PCB) Antennas 40; 2.6.2 On-Chip and Integrated Antenna Fabrication 41; 2.6.3 Stitching and Embroidery for Flexible Textile Antennas 41; 2.7 Antenna Types for Wireless Sensing Networks 42; 2.7.1 Flexible Antennas 43; 2.7.2 Omnidirectional Antennas 45; 2.7.3 Directional Antennas 46; 2.8 Advantages of Electronic Beamsteering Antennas in Sensing Systems 46; 2.9 Summary 49; References 49; 3 Sensor Design for Multimodal | ||
500 | |a - Environmental Monitoring 55; Muhammad Ali Jamshed, Bushra Haq, Syed Ahmed Shah, Kamran Ali, Qammer H. | ||
500 | |a - Abbasi, Mumraiz Khan Kasi, and Masood Ur Rehman; 3.1 Environment and Forests 56; 3.2 Methods to Combat Deforestation 56; 3.2.1 Combating Deforestation Using Wireless Sensor Networks 57; 3.2.2 Sensor Types for Combating Deforestation 58; 3.3 Design of a WSN to Combat Deforestation 59; 3.3.1 Stage 1: System Requirements 59; 3.3.1.1 Key Performance Indicators 62; 3.3.2 Stage 2: Architecture 63; 3.3.3 Stage 3: System Implementation 65; 3.3.3.1 Type of Sensors 65; 3.3.3.2 Processing Boards 66; 3.3.3.3 Communication Modules 67; 3.3.3.4 Batteries 67; 3.3.3.5 Energy Harvesting Circuit and Equipment 69; 3.3.3.6 Weather Protection 70; 3.3.3.7 Wireless Communication Link 71; 3.3.3.8 Data Processing Algorithms 74; 3.4 Summary 76; References 76; 4 Wireless Sensors for Multi-modal Health Monitoring 81; Nadeem Ajum, Shagufta Iftikhar, Tahera Kalsoom, | ||
500 | |a - and Masood Ur Rehman; 4.1 Wearable Sensors 82; 4.1.1 Electrocardiography (ECG) Sensors 83; 4.1.2 Electroencephalography (EEG) Sensors 83; 4.1.3 Electrooculography (EOG) Sensors 84; 4.1.4 Electrodermal Activity (EDA) Sensors 86; 4.1.5 Respiratory (RESP) Sensors 86; 4.1.6 Motion Sensors 86; 4.1.7 Temperature (TEMP) Sensors 87; 4.1.8 Pressure Sensors 87; 4.1.9 Hydration Sensors 88; 4.1.10 Lactate Sensors 88; 4.1.11 Photoplethysmography (PPG) Sensors 89; 4.1.12 Continuous Glucose Monitoring (CGM) Sensors 89; 4.2 Flexible Sensors 89; 4.3 Multi-modal Healthcare Sensing Devices 90; 4.3.1 Wearable Sensing Devices for Healthcare 90; 4.3.1.1 Wearable Devices in Detection 90; 4.3.1.2 Wearable Devices in Monitoring 92; 4.3.1.3 Wearable Devices in Rehabilitation 93; 4.3.1.4 Wearable Devices in Personalized Medicine 94; 4.3.1.5 Wearable Devices in Skin Patches 94; 4.3.1.6 Wearable Devices for Body Fluid Monitoring 95; 4.3.1.7 Wearable Devices in Monitoring Body Temperature 96; 4.3.1.8 Wearable | ||
500 | |a - Devices as Contact Lens 96; 4.3.1.9 Wearable Devices in Daily Use Objects 97; 4.3.2 Implantable Sensing Devices for Healthcare 97; 4.3.2.1 Implantable Cardioverter Defibrillators 98; 4.3.2.2 Bioinks and 3D Print Implants 98; 4.3.2.3 Deep Brain Stimulation 99; 4.3.2.4 Biosensor Tattoos 99; 4.4 AI Methods for Multi-modal Healthcare Systems 100; 4.4.1 Supervised Learning 100; 4.4.2 Unsupervised Learning 101; 4.4.3 Semi-supervised Learning 101; 4.4.4 Reinforcement Learning 102; 4.5 Summary 102; References 103; 5 Sensor Design for Industrial Automation 109; Abdul Jabbar, Tahera Kalsoom, | ||
500 | |a - and Masood Ur Rehman; 5.1 Multimodal Sensing in Industrial Automation 109; 5.1.1 IIoT and Multimodal Sensing 111; 5.1.2 Advanced Robotics 113; 5.1.3 Big Data Analytics 114; 5.1.4 Cloud Computing 114; 5.1.5 Artificial Intelligence 115; 5.1.6 Augmented Reality 116; 5.2 Sensors for Realizing Industrial Automation 116; 5.2.1 RF Sensors 117; 5.2.2 Vision Sensors 118; 5.2.3 Localization and Tracking Sensors 119; 5.2.4 Infrared Sensors 119; 5.2.5 Proximity Sensors 119; 5.2.6 IMU Sensors 120; 5.2.7 Level Sensors 120; 5.2.8 Temperature Sensors 120; 5.2.9 Pressure Sensors 121; 5.3 Design Considerations for Effective Multimodal Industrial Automation 121; 5.3.1 Design of AI-Assisted Multimodal Sensing 122; 5.3.2 Design of Radar Sensing Networks 123; 5.3.2.1 Transmitter and Receiver Antennas 123; 5.3.2.2 Data Collection and Interface 123; 5.3.2.3 Signal Processing 124; 5.3.2.4 Housing and Enclosure 124; 5.4 Challenges and Opportunities of Multimodal Sensing in Industrial Automation 124; 5.5 | ||
500 | |a - Summary 126; References 126; 6 Hybrid Neuromorphic-Federated Learning for Activity Recognition Using Multi-modal Wearable Sensors 133; Ahsan Raza Khan, Habib Ullah Manzoor, Fahad Ayaz, Muhammad Ali Imran, | ||
500 | |a - and Ahmed Zoha; 6.1 Multi-modal Human Activity Recognition 134; 6.2 Machine Learning Methods in Multi-modal Human Activity Recognition 137; 6.2.1 Centralized Learning-based HAR Systems 137; 6.2.2 Federated Learning-based HAR Systems 138; 6.3 System Model 139; 6.3.1 Federated Learning Framework 140; 6.3.2 Spiking Neural Network 141; 6.3.3 Proposed S-LSTM Model 144; 6.4 Simulation Setup 146; 6.4.1 Dataset Description 146; 6.4.1.1 UCI Dataset 147; 6.4.1.2 Real-World Dataset 148; 6.4.2 Performance Metrics 149; 6.5 Results and Discussion 150; 6.5.1 UCI Results 151; 6.5.2 Real-World Dataset Results 154; 6.5.3 Energy Efficiency Comparison 157; 6.5.4 Personalized Model Comparison 159; 6.6 Summary 159; References 161; 7 Multi-modal Beam Prediction for Enhanced Beam Management in Drone Communication Networks 165; Iftikhar Ahmad, Ahsan Raza Khan, Rao Naveed Bin Rais, Muhammad Ali Imran, Sajjad Hussain, | ||
500 | |a - and Ahmed Zoha; 7.1 Drone Communication 166; 7.2 Beam Management 167; 7.3 System Model 168; 7.3.1 Problem Formulation for Beam Prediction 170; 7.3.2 Proposed Stacked Vision-Assisted Beam Prediction Model 170; 7.4 Simulation and Analysis 171; 7.4.1 Description of the Dataset 173; 7.4.2 Configuration for Simulation 173; 7.4.2.1 YOLO-v5 Training Process 174; 7.4.3 Results and Analysis 175; 7.5 Summary 178; References 178; 8 Multi-modal-Sensing System for Detection and Tracking of Mind Wandering 181; Sara Khosravi, Haobo Li, Ahsan Raza Khan, Ahmed Zoha, | ||
500 | |a - and Rami Ghannam; 8.1 Mind Wandering 182; 8.2 Multi-modal Wearable Systems for Mind-Wandering Detection and Monitoring 184; 8.2.1 Wearable Eye Trackers for Gaze Measurements 185; 8.2.2 Wearable GSR and PPG Sensors for Physiological Measurements 186; 8.3 Design of Multi-modal Wearable System 187; 8.3.1 Selection of Sensor 187; 8.3.2 Selection of Participant Groups and Testing Environment 188; 8.3.3 Data Collection Process 189; 8.3.4 Machine Learning and Multisensory Fusion 190; 8.4 Results and Discussion 194; 8.5 Summary 197; References 197; 9 Adaptive Secure Multi-modal Telehealth Patient-Monitoring System 201; Muhammad Hanif, Ehsan Ullah Munir, Muhammad Maaz Rehan, Saima Gulzar Ahmad, Tassawar Iqbal, Nasira Kirn, Kashif Ayyub, | ||
500 | |a - and Naeem Ramzan; 9.1 Healthcare Systems 202; 9.1.1 Traditional Healthcare Systems 203; 9.1.2 Multi-modal Telehealth Systems 203; 9.2 Security in Healthcare Systems 205; 9.2.1 Prevailing Techniques for Secure Telehealth 205; 9.2.2 Challenges in Ensuring Healthcare Security 208; 9.2.3 Strategies to Enhance Healthcare Data Security 209; 9.2.4 Key Security Features for Telehealth Systems 210; 9.2.4.1 Encryption 210; 9.2.4.2 Authentication 211; 9.2.4.3 Access Control 211; 9.2.4.4 Audit Trails 211; 9.2.4.5 Data Integrity Checks 211; 9.2.4.6 Secure Communication Protocols 211; 9.2.4.7 Security Audits and Penetration Testing 211; 9.2.4.8 Cyber Resilience 212; 9.2.4.9 Zero-Trust-Based Micro-segmentation 212; 9.3 Blockchain-Powered ZTS for Enhanced Security of Telehealth Systems 213; 9.3.1 Zero-Trust Security 213; 9.3.2 Blockchain 214; 9.4 Cyber-resilient Telehealth-Enabled Patient Management System 217; 9.4.1 Assessment and Planning 218; 9.4.2 Infrastructure Setup 219; 9.4.3 Security Controls | ||
500 | |a - Implementation 219; 9.4.4 Training and Awareness 219; 9.4.5 Advantages and Limitations 221; 9.5 Summary 222; References 222; 10 Advances in Multi-modal Remote Infant Monitoring Systems 227; Najia Saher, Omer Riaz, Muhammad Suleman, Dost Muhammad Khan, Nasira Kirn, Sana Ullah Jan, Rizwan Shahid, Hassan Rabah, and Naeem Ramzan; 10.1 Remote Patient Monitoring 228; 10.2 Remote Infant Monitoring (RIM) System 229; 10.2.1 Contactless Remote Patient Monitoring (RPM) Systems 230; 10.2.2 Contact-Based Remote Patient Monitoring (RPM) Systems 230; 10.3 Disease-Specific Remote Infant Monitoring Systems 232; 10.3.1 Respiration and Apnea Monitoring System 232; 10.3.1.1 Emerging Sensing Techniques for Respiratory Diseases 233; 10.3.2 Heart and Blood-Related Diseases Monitoring Systems 238; 10.3.2.1 Emerging Sensing Technique | ||
520 | |a Discover the design, implementation, and analytical techniques for multi-modal intelligent sensing in this cutting-edge text The Internet of Things (IoT) is becoming ever more comprehensively integrated into everyday life. The intelligent systems that power smart technologies rely on increasingly sophisticated sensors in order to monitor inputs and respond dynamically. Multi-modal sensing offers enormous benefits for these technologies, but also comes with greater challenges; it has never been more essential to offer energy-efficient, reliable, interference-free sensing systems for use with the modern Internet of Things. Multimodal Intelligent Sensing in Modern Applications provides an introduction to systems which incorporate multiple sensors to produce situational awareness and process inputs. It is divided into three parts—physical design aspects, data acquisition and analysis techniques, and security and energy challenges—which together cover all the major topics in multi-modal sensing. The result is an indispensable volume for engineers and other professionals looking to design the smart devices of the future. Multimodal Intelligent Sensing in Modern Applications readers will also find: - Contributions from multidisciplinary contributors in wireless communications, signal processing, and sensor design- Coverage of both software and hardware solutions to sensing challenges- Detailed treatment of advanced topics such as efficient deployment, data fusion, machine learning, and moreMultimodal Intelligent Sensing in Modern Applications is ideal for experienced engineers and designers who need to apply their skills to Internet of Things and 5G/6G networks. It can also act as an introductory text for graduate researchers into understanding the background, design, and implementation of various sensor types and data analytics tools | ||
650 | 4 | |a bisacsh | |
650 | 4 | |a bisacsh | |
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fullrecord | <?xml version="1.0" encoding="UTF-8"?><collection xmlns="http://www.loc.gov/MARC21/slim"><record><leader>00000nam a2200000 c 4500</leader><controlfield tag="001">BV050155214</controlfield><controlfield tag="003">DE-604</controlfield><controlfield tag="007">t|</controlfield><controlfield tag="008">250205s2024 xx |||| 00||| eng d</controlfield><datafield tag="020" ind1=" " ind2=" "><subfield code="a">9781394257713</subfield><subfield code="9">978-1-394-25771-3</subfield></datafield><datafield tag="024" ind1="3" ind2=" "><subfield code="a">9781394257713</subfield></datafield><datafield tag="035" ind1=" " ind2=" "><subfield code="a">(DE-599)BVBBV050155214</subfield></datafield><datafield tag="040" ind1=" " ind2=" "><subfield code="a">DE-604</subfield><subfield code="b">ger</subfield><subfield code="e">rda</subfield></datafield><datafield tag="041" ind1="0" ind2=" "><subfield code="a">eng</subfield></datafield><datafield tag="049" ind1=" " ind2=" "><subfield code="a">DE-29T</subfield></datafield><datafield tag="100" ind1="1" ind2=" "><subfield code="a">Ur Rehman, Masood</subfield><subfield code="e">Verfasser</subfield><subfield code="4">aut</subfield></datafield><datafield tag="245" ind1="1" ind2="0"><subfield code="a">Multimodal Intelligent Sensing in Modern Applications</subfield></datafield><datafield tag="264" ind1=" " ind2="1"><subfield code="b">WILEY-VCH</subfield><subfield code="c">2024</subfield></datafield><datafield tag="300" ind1=" " ind2=" "><subfield code="a">320 Seiten</subfield></datafield><datafield tag="336" ind1=" " ind2=" "><subfield code="b">txt</subfield><subfield code="2">rdacontent</subfield></datafield><datafield tag="337" ind1=" " ind2=" "><subfield code="b">n</subfield><subfield code="2">rdamedia</subfield></datafield><datafield tag="338" ind1=" " ind2=" "><subfield code="b">nc</subfield><subfield code="2">rdacarrier</subfield></datafield><datafield tag="500" ind1=" " ind2=" "><subfield code="a">Discover the design, implementation, and analytical techniques for multi-modal intelligent sensing in this cutting-edge text The Internet of Things (IoT) is becoming ever more comprehensively integrated into everyday life. The intelligent systems that power smart technologies rely on increasingly sophisticated sensors in order to monitor inputs and respond dynamically. Multi-modal sensing offers enormous benefits for these technologies, but also comes with greater challenges; it has never been more essential to offer energy-efficient, reliable, interference-free sensing systems for use with the modern Internet of Things. Multimodal Intelligent Sensing in Modern Applications provides an introduction to systems which incorporate multiple sensors to produce situational awareness and process inputs. It is divided into three parts—physical design aspects, data acquisition and analysis techniques, and security and energy challenges—which together cover all the major topics in multi-modal sensing. The result is an indispensable volume for engineers and other professionals looking to design the smart devices of the future. 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It can also act as an introductory text for graduate researchers into understanding the background, design, and implementation of various sensor types and data analytics tools</subfield></datafield><datafield tag="500" ind1=" " ind2=" "><subfield code="a">Contents; About the Editors xv; List of Contributors xix; Preface xxiii; 1 Advances in Multi-modal Intelligent Sensing 1; Masood Ur Rehman, Muhammad Ali Jamshed,</subfield></datafield><datafield tag="500" ind1=" " ind2=" "><subfield code="a"> - and Tahera Kalsoom; 1.1 Multi-modal Intelligent Sensing 1; 1.2 Sensors for Multi-modal Intelligent Sensing 3; 1.2.1 Sensor Types 3; 1.2.2 Integration of Multiple Sensor Types for Enhanced Sensing Capabilities 5; 1.2.2.1 Advantages of Multiple Sensor Integration 5; 1.2.2.2 Key Considerations for Multiple Sensor Integration 6; 1.2.2.3 Concurrent Data Acquisition Methods 9; 1.2.2.4 Data Analysis Tools for Multi-modal Sensing 11; 1.2.2.5 Considerations for Data Fusion and Synchronization 13; 1.3 Applications of Multi-modal Intelligent Sensing 14; 1.3.1 Healthcare and Medical Monitoring 14; 1.3.2 Automotive and Transportation Systems 15; 1.3.3 Environmental Monitoring and Conservation 16; 1.3.4 Smart Cities and Infrastructure Management 17; 1.3.5 Industrial Automation 18; 1.4 Challenges and Opportunities in Multi-modal Sensing 18; 1.4.1 Data Security and Privacy 19; 1.4.2 Interoperability and Standardization 19; 1.4.3 Energy Efficiency and Power Management 20; 1.4.4 Coverage 21; 1.4.5</subfield></datafield><datafield tag="500" ind1=" " ind2=" "><subfield code="a"> - Summary 21; References 22; 2 Antennas for Wireless Sensors 29; Abdul Jabbar, Muhammad Ali Jamshed,</subfield></datafield><datafield tag="500" ind1=" " ind2=" "><subfield code="a"> - and Masood Ur Rehman; 2.1 Wireless Sensors: Definition and Architecture 29; 2.1.1 Wireless Sensor Node Architecture 30; 2.1.2 Operating Systems 32; 2.1.3 Classification of Wireless Sensors 32; 2.2 Multi-modal Wireless Sensing 34; 2.3 Antennas: The Sensory Gateway for Wireless Sensors 35; 2.4 Fundamental Antenna Parameters 36; 2.4.1 Bandwidth and Operating Frequency 36; 2.4.2 Gain 37; 2.4.3 Radiation Pattern 37; 2.4.4 Polarization 38; 2.5 Key Operating Frequency Bands for Sensing Antennas 39; 2.6 Fabrication Methods for Sensing Antennas 40; 2.6.1 Printed Circuit Board (PCB) Antennas 40; 2.6.2 On-Chip and Integrated Antenna Fabrication 41; 2.6.3 Stitching and Embroidery for Flexible Textile Antennas 41; 2.7 Antenna Types for Wireless Sensing Networks 42; 2.7.1 Flexible Antennas 43; 2.7.2 Omnidirectional Antennas 45; 2.7.3 Directional Antennas 46; 2.8 Advantages of Electronic Beamsteering Antennas in Sensing Systems 46; 2.9 Summary 49; References 49; 3 Sensor Design for Multimodal</subfield></datafield><datafield tag="500" ind1=" " ind2=" "><subfield code="a"> - Environmental Monitoring 55; Muhammad Ali Jamshed, Bushra Haq, Syed Ahmed Shah, Kamran Ali, Qammer H.</subfield></datafield><datafield tag="500" ind1=" " ind2=" "><subfield code="a"> - Abbasi, Mumraiz Khan Kasi, and Masood Ur Rehman; 3.1 Environment and Forests 56; 3.2 Methods to Combat Deforestation 56; 3.2.1 Combating Deforestation Using Wireless Sensor Networks 57; 3.2.2 Sensor Types for Combating Deforestation 58; 3.3 Design of a WSN to Combat Deforestation 59; 3.3.1 Stage 1: System Requirements 59; 3.3.1.1 Key Performance Indicators 62; 3.3.2 Stage 2: Architecture 63; 3.3.3 Stage 3: System Implementation 65; 3.3.3.1 Type of Sensors 65; 3.3.3.2 Processing Boards 66; 3.3.3.3 Communication Modules 67; 3.3.3.4 Batteries 67; 3.3.3.5 Energy Harvesting Circuit and Equipment 69; 3.3.3.6 Weather Protection 70; 3.3.3.7 Wireless Communication Link 71; 3.3.3.8 Data Processing Algorithms 74; 3.4 Summary 76; References 76; 4 Wireless Sensors for Multi-modal Health Monitoring 81; Nadeem Ajum, Shagufta Iftikhar, Tahera Kalsoom,</subfield></datafield><datafield tag="500" ind1=" " ind2=" "><subfield code="a"> - and Masood Ur Rehman; 4.1 Wearable Sensors 82; 4.1.1 Electrocardiography (ECG) Sensors 83; 4.1.2 Electroencephalography (EEG) Sensors 83; 4.1.3 Electrooculography (EOG) Sensors 84; 4.1.4 Electrodermal Activity (EDA) Sensors 86; 4.1.5 Respiratory (RESP) Sensors 86; 4.1.6 Motion Sensors 86; 4.1.7 Temperature (TEMP) Sensors 87; 4.1.8 Pressure Sensors 87; 4.1.9 Hydration Sensors 88; 4.1.10 Lactate Sensors 88; 4.1.11 Photoplethysmography (PPG) Sensors 89; 4.1.12 Continuous Glucose Monitoring (CGM) Sensors 89; 4.2 Flexible Sensors 89; 4.3 Multi-modal Healthcare Sensing Devices 90; 4.3.1 Wearable Sensing Devices for Healthcare 90; 4.3.1.1 Wearable Devices in Detection 90; 4.3.1.2 Wearable Devices in Monitoring 92; 4.3.1.3 Wearable Devices in Rehabilitation 93; 4.3.1.4 Wearable Devices in Personalized Medicine 94; 4.3.1.5 Wearable Devices in Skin Patches 94; 4.3.1.6 Wearable Devices for Body Fluid Monitoring 95; 4.3.1.7 Wearable Devices in Monitoring Body Temperature 96; 4.3.1.8 Wearable</subfield></datafield><datafield tag="500" ind1=" " ind2=" "><subfield code="a"> - Devices as Contact Lens 96; 4.3.1.9 Wearable Devices in Daily Use Objects 97; 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5.2.4 Infrared Sensors 119; 5.2.5 Proximity Sensors 119; 5.2.6 IMU Sensors 120; 5.2.7 Level Sensors 120; 5.2.8 Temperature Sensors 120; 5.2.9 Pressure Sensors 121; 5.3 Design Considerations for Effective Multimodal Industrial Automation 121; 5.3.1 Design of AI-Assisted Multimodal Sensing 122; 5.3.2 Design of Radar Sensing Networks 123; 5.3.2.1 Transmitter and Receiver Antennas 123; 5.3.2.2 Data Collection and Interface 123; 5.3.2.3 Signal Processing 124; 5.3.2.4 Housing and Enclosure 124; 5.4 Challenges and Opportunities of Multimodal Sensing in Industrial Automation 124; 5.5</subfield></datafield><datafield tag="500" ind1=" " ind2=" "><subfield code="a"> - Summary 126; References 126; 6 Hybrid Neuromorphic-Federated Learning for Activity Recognition Using Multi-modal Wearable Sensors 133; Ahsan Raza Khan, Habib Ullah Manzoor, Fahad Ayaz, Muhammad Ali Imran,</subfield></datafield><datafield tag="500" ind1=" " ind2=" "><subfield code="a"> - and Ahmed Zoha; 6.1 Multi-modal Human Activity Recognition 134; 6.2 Machine Learning Methods in Multi-modal Human Activity Recognition 137; 6.2.1 Centralized Learning-based HAR Systems 137; 6.2.2 Federated Learning-based HAR Systems 138; 6.3 System Model 139; 6.3.1 Federated Learning Framework 140; 6.3.2 Spiking Neural Network 141; 6.3.3 Proposed S-LSTM Model 144; 6.4 Simulation Setup 146; 6.4.1 Dataset Description 146; 6.4.1.1 UCI Dataset 147; 6.4.1.2 Real-World Dataset 148; 6.4.2 Performance Metrics 149; 6.5 Results and Discussion 150; 6.5.1 UCI Results 151; 6.5.2 Real-World Dataset Results 154; 6.5.3 Energy Efficiency Comparison 157; 6.5.4 Personalized Model Comparison 159; 6.6 Summary 159; References 161; 7 Multi-modal Beam Prediction for Enhanced Beam Management in Drone Communication Networks 165; Iftikhar Ahmad, Ahsan Raza Khan, Rao Naveed Bin Rais, Muhammad Ali Imran, Sajjad Hussain,</subfield></datafield><datafield tag="500" ind1=" " ind2=" "><subfield code="a"> - and Ahmed Zoha; 7.1 Drone Communication 166; 7.2 Beam Management 167; 7.3 System Model 168; 7.3.1 Problem Formulation for Beam Prediction 170; 7.3.2 Proposed Stacked Vision-Assisted Beam Prediction Model 170; 7.4 Simulation and Analysis 171; 7.4.1 Description of the Dataset 173; 7.4.2 Configuration for Simulation 173; 7.4.2.1 YOLO-v5 Training Process 174; 7.4.3 Results and Analysis 175; 7.5 Summary 178; References 178; 8 Multi-modal-Sensing System for Detection and Tracking of Mind Wandering 181; Sara Khosravi, Haobo Li, Ahsan Raza Khan, Ahmed Zoha,</subfield></datafield><datafield tag="500" ind1=" " ind2=" "><subfield code="a"> - and Rami Ghannam; 8.1 Mind Wandering 182; 8.2 Multi-modal Wearable Systems for Mind-Wandering Detection and Monitoring 184; 8.2.1 Wearable Eye Trackers for Gaze Measurements 185; 8.2.2 Wearable GSR and PPG Sensors for Physiological Measurements 186; 8.3 Design of Multi-modal Wearable System 187; 8.3.1 Selection of Sensor 187; 8.3.2 Selection of Participant Groups and Testing Environment 188; 8.3.3 Data Collection Process 189; 8.3.4 Machine Learning and Multisensory Fusion 190; 8.4 Results and Discussion 194; 8.5 Summary 197; References 197; 9 Adaptive Secure Multi-modal Telehealth Patient-Monitoring System 201; Muhammad Hanif, Ehsan Ullah Munir, Muhammad Maaz Rehan, Saima Gulzar Ahmad, Tassawar Iqbal, Nasira Kirn, Kashif Ayyub,</subfield></datafield><datafield tag="500" ind1=" " ind2=" "><subfield code="a"> - and Naeem Ramzan; 9.1 Healthcare Systems 202; 9.1.1 Traditional Healthcare Systems 203; 9.1.2 Multi-modal Telehealth Systems 203; 9.2 Security in Healthcare Systems 205; 9.2.1 Prevailing Techniques for Secure Telehealth 205; 9.2.2 Challenges in Ensuring Healthcare Security 208; 9.2.3 Strategies to Enhance Healthcare Data Security 209; 9.2.4 Key Security Features for Telehealth Systems 210; 9.2.4.1 Encryption 210; 9.2.4.2 Authentication 211; 9.2.4.3 Access Control 211; 9.2.4.4 Audit Trails 211; 9.2.4.5 Data Integrity Checks 211; 9.2.4.6 Secure Communication Protocols 211; 9.2.4.7 Security Audits and Penetration Testing 211; 9.2.4.8 Cyber Resilience 212; 9.2.4.9 Zero-Trust-Based Micro-segmentation 212; 9.3 Blockchain-Powered ZTS for Enhanced Security of Telehealth Systems 213; 9.3.1 Zero-Trust Security 213; 9.3.2 Blockchain 214; 9.4 Cyber-resilient Telehealth-Enabled Patient Management System 217; 9.4.1 Assessment and Planning 218; 9.4.2 Infrastructure Setup 219; 9.4.3 Security Controls</subfield></datafield><datafield tag="500" ind1=" " ind2=" "><subfield code="a"> - Implementation 219; 9.4.4 Training and Awareness 219; 9.4.5 Advantages and Limitations 221; 9.5 Summary 222; References 222; 10 Advances in Multi-modal Remote Infant Monitoring Systems 227; Najia Saher, Omer Riaz, Muhammad Suleman, Dost Muhammad Khan, Nasira Kirn, Sana Ullah Jan, Rizwan Shahid, Hassan Rabah, and Naeem Ramzan; 10.1 Remote Patient Monitoring 228; 10.2 Remote Infant Monitoring (RIM) System 229; 10.2.1 Contactless Remote Patient Monitoring (RPM) Systems 230; 10.2.2 Contact-Based Remote Patient Monitoring (RPM) Systems 230; 10.3 Disease-Specific Remote Infant Monitoring Systems 232; 10.3.1 Respiration and Apnea Monitoring System 232; 10.3.1.1 Emerging Sensing Techniques for Respiratory Diseases 233; 10.3.2 Heart and Blood-Related Diseases Monitoring Systems 238; 10.3.2.1 Emerging Sensing Technique</subfield></datafield><datafield tag="520" ind1=" " ind2=" "><subfield code="a">Discover the design, implementation, and analytical techniques for multi-modal intelligent sensing in this cutting-edge text The Internet of Things (IoT) is becoming ever more comprehensively integrated into everyday life. 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illustrated | Not Illustrated |
indexdate | 2025-02-05T23:00:11Z |
institution | BVB |
isbn | 9781394257713 |
language | English |
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owner | DE-29T |
owner_facet | DE-29T |
physical | 320 Seiten |
publishDate | 2024 |
publishDateSearch | 2024 |
publishDateSort | 2024 |
publisher | WILEY-VCH |
record_format | marc |
spelling | Ur Rehman, Masood Verfasser aut Multimodal Intelligent Sensing in Modern Applications WILEY-VCH 2024 320 Seiten txt rdacontent n rdamedia nc rdacarrier Discover the design, implementation, and analytical techniques for multi-modal intelligent sensing in this cutting-edge text The Internet of Things (IoT) is becoming ever more comprehensively integrated into everyday life. The intelligent systems that power smart technologies rely on increasingly sophisticated sensors in order to monitor inputs and respond dynamically. Multi-modal sensing offers enormous benefits for these technologies, but also comes with greater challenges; it has never been more essential to offer energy-efficient, reliable, interference-free sensing systems for use with the modern Internet of Things. Multimodal Intelligent Sensing in Modern Applications provides an introduction to systems which incorporate multiple sensors to produce situational awareness and process inputs. It is divided into three parts—physical design aspects, data acquisition and analysis techniques, and security and energy challenges—which together cover all the major topics in multi-modal sensing. The result is an indispensable volume for engineers and other professionals looking to design the smart devices of the future. Multimodal Intelligent Sensing in Modern Applications readers will also find: - Contributions from multidisciplinary contributors in wireless communications, signal processing, and sensor design- Coverage of both software and hardware solutions to sensing challenges- Detailed treatment of advanced topics such as efficient deployment, data fusion, machine learning, and moreMultimodal Intelligent Sensing in Modern Applications is ideal for experienced engineers and designers who need to apply their skills to Internet of Things and 5G/6G networks. It can also act as an introductory text for graduate researchers into understanding the background, design, and implementation of various sensor types and data analytics tools Contents; About the Editors xv; List of Contributors xix; Preface xxiii; 1 Advances in Multi-modal Intelligent Sensing 1; Masood Ur Rehman, Muhammad Ali Jamshed, - and Tahera Kalsoom; 1.1 Multi-modal Intelligent Sensing 1; 1.2 Sensors for Multi-modal Intelligent Sensing 3; 1.2.1 Sensor Types 3; 1.2.2 Integration of Multiple Sensor Types for Enhanced Sensing Capabilities 5; 1.2.2.1 Advantages of Multiple Sensor Integration 5; 1.2.2.2 Key Considerations for Multiple Sensor Integration 6; 1.2.2.3 Concurrent Data Acquisition Methods 9; 1.2.2.4 Data Analysis Tools for Multi-modal Sensing 11; 1.2.2.5 Considerations for Data Fusion and Synchronization 13; 1.3 Applications of Multi-modal Intelligent Sensing 14; 1.3.1 Healthcare and Medical Monitoring 14; 1.3.2 Automotive and Transportation Systems 15; 1.3.3 Environmental Monitoring and Conservation 16; 1.3.4 Smart Cities and Infrastructure Management 17; 1.3.5 Industrial Automation 18; 1.4 Challenges and Opportunities in Multi-modal Sensing 18; 1.4.1 Data Security and Privacy 19; 1.4.2 Interoperability and Standardization 19; 1.4.3 Energy Efficiency and Power Management 20; 1.4.4 Coverage 21; 1.4.5 - Summary 21; References 22; 2 Antennas for Wireless Sensors 29; Abdul Jabbar, Muhammad Ali Jamshed, - and Masood Ur Rehman; 2.1 Wireless Sensors: Definition and Architecture 29; 2.1.1 Wireless Sensor Node Architecture 30; 2.1.2 Operating Systems 32; 2.1.3 Classification of Wireless Sensors 32; 2.2 Multi-modal Wireless Sensing 34; 2.3 Antennas: The Sensory Gateway for Wireless Sensors 35; 2.4 Fundamental Antenna Parameters 36; 2.4.1 Bandwidth and Operating Frequency 36; 2.4.2 Gain 37; 2.4.3 Radiation Pattern 37; 2.4.4 Polarization 38; 2.5 Key Operating Frequency Bands for Sensing Antennas 39; 2.6 Fabrication Methods for Sensing Antennas 40; 2.6.1 Printed Circuit Board (PCB) Antennas 40; 2.6.2 On-Chip and Integrated Antenna Fabrication 41; 2.6.3 Stitching and Embroidery for Flexible Textile Antennas 41; 2.7 Antenna Types for Wireless Sensing Networks 42; 2.7.1 Flexible Antennas 43; 2.7.2 Omnidirectional Antennas 45; 2.7.3 Directional Antennas 46; 2.8 Advantages of Electronic Beamsteering Antennas in Sensing Systems 46; 2.9 Summary 49; References 49; 3 Sensor Design for Multimodal - Environmental Monitoring 55; Muhammad Ali Jamshed, Bushra Haq, Syed Ahmed Shah, Kamran Ali, Qammer H. - Abbasi, Mumraiz Khan Kasi, and Masood Ur Rehman; 3.1 Environment and Forests 56; 3.2 Methods to Combat Deforestation 56; 3.2.1 Combating Deforestation Using Wireless Sensor Networks 57; 3.2.2 Sensor Types for Combating Deforestation 58; 3.3 Design of a WSN to Combat Deforestation 59; 3.3.1 Stage 1: System Requirements 59; 3.3.1.1 Key Performance Indicators 62; 3.3.2 Stage 2: Architecture 63; 3.3.3 Stage 3: System Implementation 65; 3.3.3.1 Type of Sensors 65; 3.3.3.2 Processing Boards 66; 3.3.3.3 Communication Modules 67; 3.3.3.4 Batteries 67; 3.3.3.5 Energy Harvesting Circuit and Equipment 69; 3.3.3.6 Weather Protection 70; 3.3.3.7 Wireless Communication Link 71; 3.3.3.8 Data Processing Algorithms 74; 3.4 Summary 76; References 76; 4 Wireless Sensors for Multi-modal Health Monitoring 81; Nadeem Ajum, Shagufta Iftikhar, Tahera Kalsoom, - and Masood Ur Rehman; 4.1 Wearable Sensors 82; 4.1.1 Electrocardiography (ECG) Sensors 83; 4.1.2 Electroencephalography (EEG) Sensors 83; 4.1.3 Electrooculography (EOG) Sensors 84; 4.1.4 Electrodermal Activity (EDA) Sensors 86; 4.1.5 Respiratory (RESP) Sensors 86; 4.1.6 Motion Sensors 86; 4.1.7 Temperature (TEMP) Sensors 87; 4.1.8 Pressure Sensors 87; 4.1.9 Hydration Sensors 88; 4.1.10 Lactate Sensors 88; 4.1.11 Photoplethysmography (PPG) Sensors 89; 4.1.12 Continuous Glucose Monitoring (CGM) Sensors 89; 4.2 Flexible Sensors 89; 4.3 Multi-modal Healthcare Sensing Devices 90; 4.3.1 Wearable Sensing Devices for Healthcare 90; 4.3.1.1 Wearable Devices in Detection 90; 4.3.1.2 Wearable Devices in Monitoring 92; 4.3.1.3 Wearable Devices in Rehabilitation 93; 4.3.1.4 Wearable Devices in Personalized Medicine 94; 4.3.1.5 Wearable Devices in Skin Patches 94; 4.3.1.6 Wearable Devices for Body Fluid Monitoring 95; 4.3.1.7 Wearable Devices in Monitoring Body Temperature 96; 4.3.1.8 Wearable - Devices as Contact Lens 96; 4.3.1.9 Wearable Devices in Daily Use Objects 97; 4.3.2 Implantable Sensing Devices for Healthcare 97; 4.3.2.1 Implantable Cardioverter Defibrillators 98; 4.3.2.2 Bioinks and 3D Print Implants 98; 4.3.2.3 Deep Brain Stimulation 99; 4.3.2.4 Biosensor Tattoos 99; 4.4 AI Methods for Multi-modal Healthcare Systems 100; 4.4.1 Supervised Learning 100; 4.4.2 Unsupervised Learning 101; 4.4.3 Semi-supervised Learning 101; 4.4.4 Reinforcement Learning 102; 4.5 Summary 102; References 103; 5 Sensor Design for Industrial Automation 109; Abdul Jabbar, Tahera Kalsoom, - and Masood Ur Rehman; 5.1 Multimodal Sensing in Industrial Automation 109; 5.1.1 IIoT and Multimodal Sensing 111; 5.1.2 Advanced Robotics 113; 5.1.3 Big Data Analytics 114; 5.1.4 Cloud Computing 114; 5.1.5 Artificial Intelligence 115; 5.1.6 Augmented Reality 116; 5.2 Sensors for Realizing Industrial Automation 116; 5.2.1 RF Sensors 117; 5.2.2 Vision Sensors 118; 5.2.3 Localization and Tracking Sensors 119; 5.2.4 Infrared Sensors 119; 5.2.5 Proximity Sensors 119; 5.2.6 IMU Sensors 120; 5.2.7 Level Sensors 120; 5.2.8 Temperature Sensors 120; 5.2.9 Pressure Sensors 121; 5.3 Design Considerations for Effective Multimodal Industrial Automation 121; 5.3.1 Design of AI-Assisted Multimodal Sensing 122; 5.3.2 Design of Radar Sensing Networks 123; 5.3.2.1 Transmitter and Receiver Antennas 123; 5.3.2.2 Data Collection and Interface 123; 5.3.2.3 Signal Processing 124; 5.3.2.4 Housing and Enclosure 124; 5.4 Challenges and Opportunities of Multimodal Sensing in Industrial Automation 124; 5.5 - Summary 126; References 126; 6 Hybrid Neuromorphic-Federated Learning for Activity Recognition Using Multi-modal Wearable Sensors 133; Ahsan Raza Khan, Habib Ullah Manzoor, Fahad Ayaz, Muhammad Ali Imran, - and Ahmed Zoha; 6.1 Multi-modal Human Activity Recognition 134; 6.2 Machine Learning Methods in Multi-modal Human Activity Recognition 137; 6.2.1 Centralized Learning-based HAR Systems 137; 6.2.2 Federated Learning-based HAR Systems 138; 6.3 System Model 139; 6.3.1 Federated Learning Framework 140; 6.3.2 Spiking Neural Network 141; 6.3.3 Proposed S-LSTM Model 144; 6.4 Simulation Setup 146; 6.4.1 Dataset Description 146; 6.4.1.1 UCI Dataset 147; 6.4.1.2 Real-World Dataset 148; 6.4.2 Performance Metrics 149; 6.5 Results and Discussion 150; 6.5.1 UCI Results 151; 6.5.2 Real-World Dataset Results 154; 6.5.3 Energy Efficiency Comparison 157; 6.5.4 Personalized Model Comparison 159; 6.6 Summary 159; References 161; 7 Multi-modal Beam Prediction for Enhanced Beam Management in Drone Communication Networks 165; Iftikhar Ahmad, Ahsan Raza Khan, Rao Naveed Bin Rais, Muhammad Ali Imran, Sajjad Hussain, - and Ahmed Zoha; 7.1 Drone Communication 166; 7.2 Beam Management 167; 7.3 System Model 168; 7.3.1 Problem Formulation for Beam Prediction 170; 7.3.2 Proposed Stacked Vision-Assisted Beam Prediction Model 170; 7.4 Simulation and Analysis 171; 7.4.1 Description of the Dataset 173; 7.4.2 Configuration for Simulation 173; 7.4.2.1 YOLO-v5 Training Process 174; 7.4.3 Results and Analysis 175; 7.5 Summary 178; References 178; 8 Multi-modal-Sensing System for Detection and Tracking of Mind Wandering 181; Sara Khosravi, Haobo Li, Ahsan Raza Khan, Ahmed Zoha, - and Rami Ghannam; 8.1 Mind Wandering 182; 8.2 Multi-modal Wearable Systems for Mind-Wandering Detection and Monitoring 184; 8.2.1 Wearable Eye Trackers for Gaze Measurements 185; 8.2.2 Wearable GSR and PPG Sensors for Physiological Measurements 186; 8.3 Design of Multi-modal Wearable System 187; 8.3.1 Selection of Sensor 187; 8.3.2 Selection of Participant Groups and Testing Environment 188; 8.3.3 Data Collection Process 189; 8.3.4 Machine Learning and Multisensory Fusion 190; 8.4 Results and Discussion 194; 8.5 Summary 197; References 197; 9 Adaptive Secure Multi-modal Telehealth Patient-Monitoring System 201; Muhammad Hanif, Ehsan Ullah Munir, Muhammad Maaz Rehan, Saima Gulzar Ahmad, Tassawar Iqbal, Nasira Kirn, Kashif Ayyub, - and Naeem Ramzan; 9.1 Healthcare Systems 202; 9.1.1 Traditional Healthcare Systems 203; 9.1.2 Multi-modal Telehealth Systems 203; 9.2 Security in Healthcare Systems 205; 9.2.1 Prevailing Techniques for Secure Telehealth 205; 9.2.2 Challenges in Ensuring Healthcare Security 208; 9.2.3 Strategies to Enhance Healthcare Data Security 209; 9.2.4 Key Security Features for Telehealth Systems 210; 9.2.4.1 Encryption 210; 9.2.4.2 Authentication 211; 9.2.4.3 Access Control 211; 9.2.4.4 Audit Trails 211; 9.2.4.5 Data Integrity Checks 211; 9.2.4.6 Secure Communication Protocols 211; 9.2.4.7 Security Audits and Penetration Testing 211; 9.2.4.8 Cyber Resilience 212; 9.2.4.9 Zero-Trust-Based Micro-segmentation 212; 9.3 Blockchain-Powered ZTS for Enhanced Security of Telehealth Systems 213; 9.3.1 Zero-Trust Security 213; 9.3.2 Blockchain 214; 9.4 Cyber-resilient Telehealth-Enabled Patient Management System 217; 9.4.1 Assessment and Planning 218; 9.4.2 Infrastructure Setup 219; 9.4.3 Security Controls - Implementation 219; 9.4.4 Training and Awareness 219; 9.4.5 Advantages and Limitations 221; 9.5 Summary 222; References 222; 10 Advances in Multi-modal Remote Infant Monitoring Systems 227; Najia Saher, Omer Riaz, Muhammad Suleman, Dost Muhammad Khan, Nasira Kirn, Sana Ullah Jan, Rizwan Shahid, Hassan Rabah, and Naeem Ramzan; 10.1 Remote Patient Monitoring 228; 10.2 Remote Infant Monitoring (RIM) System 229; 10.2.1 Contactless Remote Patient Monitoring (RPM) Systems 230; 10.2.2 Contact-Based Remote Patient Monitoring (RPM) Systems 230; 10.3 Disease-Specific Remote Infant Monitoring Systems 232; 10.3.1 Respiration and Apnea Monitoring System 232; 10.3.1.1 Emerging Sensing Techniques for Respiratory Diseases 233; 10.3.2 Heart and Blood-Related Diseases Monitoring Systems 238; 10.3.2.1 Emerging Sensing Technique bisacsh Elektronik, Elektrotechnik, Nachrichtentechnik Zoha, Ahmed Sonstige oth Jamshed, Muhammad Ali Sonstige oth Ramzan, Naeem Sonstige oth |
spellingShingle | Ur Rehman, Masood Multimodal Intelligent Sensing in Modern Applications bisacsh |
title | Multimodal Intelligent Sensing in Modern Applications |
title_auth | Multimodal Intelligent Sensing in Modern Applications |
title_exact_search | Multimodal Intelligent Sensing in Modern Applications |
title_full | Multimodal Intelligent Sensing in Modern Applications |
title_fullStr | Multimodal Intelligent Sensing in Modern Applications |
title_full_unstemmed | Multimodal Intelligent Sensing in Modern Applications |
title_short | Multimodal Intelligent Sensing in Modern Applications |
title_sort | multimodal intelligent sensing in modern applications |
topic | bisacsh |
topic_facet | bisacsh |
work_keys_str_mv | AT urrehmanmasood multimodalintelligentsensinginmodernapplications AT zohaahmed multimodalintelligentsensinginmodernapplications AT jamshedmuhammadali multimodalintelligentsensinginmodernapplications AT ramzannaeem multimodalintelligentsensinginmodernapplications |