Browse Subject Headings
Autonomous Systems in the Internet of Vehicles
Autonomous Systems in the Internet of Vehicles
Click to enlarge
ISBN No.: 9781394311699
Pages: 336
Year: 202603
Format: Trade Cloth (Hard Cover)
Price: $ 271.77
Dispatch delay: Dispatched between 7 to 15 days
Status: Available

Preface xi 1 A Cognitive Edge-Driven Autonomous Learning System for Scalable and Secure IoV Automation 1 V. Muthukumaran, S. Satheesh Kumar, Jahnavi S., Rose Bindu Joseph P. and Firoz Khan 1.1 Introduction 2 1.2 Related Study 3 1.3 System Methodology 7 1.


3.1 Multilayer Edge Computing Framework 7 1.3.2 Federated Reinforcement Learning Model 10 1.3.3 Adaptive Dynamic Power Control Algorithm for CEALS 11 1.4 Experimentation Results 13 1.5 Conclusion 15 2 Adaptive Feature Alignment and Fusion for Multisensor Image Integration in the Internet of Vehicles 19 Vijay Anand R.


and Madala Guru Brahmam 2.1 Introduction 20 2.2 Related Study 22 2.3 System Methodology 24 2.3.1 Multisensor Data Acquisition 24 2.3.2 Preprocessing 25 2.


3.3 Dynamic Feature Alignment in AFAF-Net 25 2.3.4 Attention-Guided Fusion Method 26 2.3.5 Real-Time Object Detection 29 2.4 Experimentation Results 31 2.5 Conclusion 33 3 Design of ML-CASF: Multilayer Context-Aware Sensor Fusion for Autonomous Vehicles in the Internet of Vehicles 37 Sukumar R.


and Sathishkumar V.E. 3.1 Introduction 38 3.2 Related Study 40 3.3 System Methodology 42 3.3.1 Sensor Data Acquisition 42 3.


3.2 Preprocessing and Synchronization 42 3.3.3 Graph Construction for Sensor Data 42 3.4 Experimentation Results 48 3.5 Conclusion 52 4 Adaptive Multimodal Fusion for Robust Autonomous Driving Perception with Attention-Based Learning 55 Sangeetha R. 4.1 Introduction 56 4.


2 Related Study 59 4.3 System Methodology 61 4.3.1 Data Collection and Preprocessing 61 4.3.2 Feature Extraction 62 4.3.3 Proposed Methodology 63 4.


4 Experimentation Results 67 4.4.1 Performance Analysis 68 4.4.2 Computational Performance Comparison 69 4.4.3 Impact of Sensor Modalities on Detection Performance 70 4.5 Conclusion 71 5 Optimization-Driven Multisensor Fusion Framework for Autonomous Systems in the Internet of Vehicles 75 C.


Gowdham, A.B. Hajira Be, C. Ashwini, S. Prabu and Zubair Rahaman 5.1 Introduction 76 5.2 Related Study 78 5.3 System Methodology 82 5.


3.1 Data Acquisition and Preprocessing 82 5.3.2 Proposed Framework 83 5.3.2.1 EKF for Sensor Fusion 84 5.3.


2.2 PF for Nonlinear Fusion 85 5.3.2.3 Deep Learning-Based Fusion Using CNNs and Transformers 85 5.4 Experimentation Results 86 5.5 Conclusion 89 6 A Hybrid Neurosymbolic Decision-Making Approach with Multimodal Sensor Fusion for Autonomous Vehicles 93 Devi A., Rose Bindu Joseph P.


and Meram Munirathnam 6.1 Introduction 94 6.2 Related Study 96 6.3 System Methodology 100 6.3.1 Perception Module 100 6.3.2 Hybrid Decision-Making Algorithm for AVs 101 6.


3.3 Trajectory Planning and Execution 103 6.4 Experimentation Results 103 6.5 Conclusion 105 7 Reinforcement Learning-Driven Multisensor Fusion for Real-Time Navigation in Intelligent and Opportunistic Vehicular Networks 109 Mahalakshmi, Suma T., Soya Mathew and Nitya S. 7.1 Introduction 110 7.2 Related Study 112 7.


3 System Methodology 115 7.3.1 Perception Module 115 7.3.2 Proposed Algorithms 115 7.4 Experimentation Results 120 7.5 Conclusion 122 8 Hybrid Multimodal Fusion Network (HMFNet) for Enhanced Perception in Autonomous Vehicles 127 Mahalakshmi, Ranjini K. S.


, Nidhi S. Vaishnaw and Jesla Joseph 8.1 Introduction 128 8.2 Related Study 130 8.3 System Methodology 132 8.3.1 Dataset Used 132 8.3.


2 Feature Extraction 133 8.3.3 Proposed HMFNet 134 8.4 Experimentation Results 138 8.5 Conclusion 140 9 Fusion-Enhanced Adaptive Learning for Robust Multisensor Integration in Autonomous IoV 143 A. Radha Krishna, U.V. Ramesh, S.


Sathish Kumar and Aimin Li 9.1 Introduction 144 9.2 Related Study 148 9.3 System Methodology 151 9.3.1 Data Acquisition and Sensor Integration 151 9.3.2 SESW Algorithm 152 9.


3.3 Multiscale Spatiotemporal Fusion Network 155 9.3.3.1 Feature Extraction Layer 155 9.3.3.2 Multiscale Fusion Module 155 9.


3.3.3 Decision Refinement Layer 156 9.3.4 Multitask Output for Perception, Localization, and Path Planning 157 9.3.5 Final Computation Flow 157 9.4 Experimentation Results 158 9.


4.1 Localization Accuracy in Simulation 159 9.4.2 Object Detection and Perception Accuracy 159 9.4.3 Computational Efficiency and Processing Latency 160 9.4.4 Decision-Making Latency with V2X Simulation 160 9.


4.5 Path Planning and Collision Avoidance in Simulation 160 9.5 Conclusion 162 10 Dynamically Reconfigurable Multisensor Fusion for Enhanced Object Detection in Autonomous Vehicles 167 V. Muthukumaran, M. Sathish Kumar, G. Kumaran, Vidya K.B. and Ahmad Alkhayyat 10.


1 Introduction 168 10.2 Related Study 170 10.3 System Methodology 173 10.3.1 Data Acquisition and Preprocessing 173 10.3.2 Proposed Algorithms 174 10.4 Experimentation Results 181 10.


5 Conclusion 183 11 AI-Driven Edge Computing for Secure and Efficient Internet of Vehicles (IoV) Communication 187 Sukumar R. and Saurav Mallik 11.1 Introduction 188 11.2 Related Study 191 11.3 System Methodology 195 11.3.1 Data Collection and Preprocessing 195 11.3.


2 Feature Extraction 197 11.3.3 Proposed Algorithms 197 11.4 Experimentation Results 201 11.5 Conclusion 207 12 Federated Autoencoder-GRU-Based Intrusion Detection System for Secure IoV-Connected Autonomous Vehicles 211 Pegadapelli Srinivas, Vijey Nathan, Radhika Rajavelu, Suresh Kulandaivelu and Roger Atanga 12.1 Introduction 212 12.2 Background Study on IoV 215 12.3 System Methodology 218 12.


3.1 Dataset Description 218 12.3.2 Data Preprocessing 220 12.3.3 Proposed Federated Autoencoder-GRU IDS 221 12.4 Experimental Results 225 12.5 Conclusion 229 13 Edge-Driven Multimodal Fusion Framework for Real-Time Emotion-Aware Vehicular Networks 233 Manjula Sanjay Koti, S.


Satheesh Kumar, Janani S., Arun A. and Mahmoud Ahmad Al-Khasawneh 13.1 Introduction 234 13.2 Related Study 238 13.3 System Methodology 243 13.3.1 Multimodal Data Acquisition 243 13.


3.2 Signal Preprocessing and Synchronization 245 13.3.3 Feature Extraction and Fusion 246 13.3.4 Emotion Recognition Engine 248 13.3.5 Emotional Readiness for Control Handover 250 13.


4 Experimentation Results 253 13.5 Conclusion 257 14 Spatiotemporal Attention-Based CNN-BiLSTM Model for Robust Lane and Obstacle Detection in IoV-Enabled Autonomous Driving 261 Suresh Kulandaivelu, Syied Mazar, Sangeetha N., Sathiyapriya Rajavelu and Anita Garhwal 14.1 Introduction 262 14.2 Related Study 265 14.3 System Methodology 269 14.3.1 Dataset Used and Preprocessing 269 14.


3.2 Network Architecture: Spatiotemporal Attention-Enhanced CNN-BiLSTM 272 14.3.3 Inference Optimization and Real-Time Deployment 274 14.4 Experimentation Results 275 14.5 Conclusion 279 15 Multimodal Vision-LiDAR Transformer Fusion for End-to-End IoV-Based Autonomous Navigation 283 Mohan Mani, Hariprasath K., C. Vijayakumar, Sathiyapriya Rajavelu and Sarawoot Boonkirdram 15.


1 Introduction 284 15.2 Background Study 287 15.3 System Methodology 290 15.3.1 Simulation Environment and Dataset Generation 290 15.3.2 Multimodal Preprocessing Pipeline 291 15.3.


3 Network Architecture: Transformer-Based Multimodal Fusion 293 15.4 Experimental Results 298 15.5 Conclusion 302 References 303 Index 305.


To be able to view the table of contents for this publication then please subscribe by clicking the button below...
To be able to view the full description for this publication then please subscribe by clicking the button below...
Browse Subject Headings