Deep Learning and Its Applications for Vehicle Networks
Herausgeber: Hu, Fei; Rasheed, Iftikhar
Deep Learning and Its Applications for Vehicle Networks
Herausgeber: Hu, Fei; Rasheed, Iftikhar
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This book is based on the work from world-famous experts on the application of DL for vehicle networks. It consists of the following five parts: 1. DL for vehicle safety and security, 2. DL for effective vehicle communications, 3. DL for vehicle control, 4. DL for information management, 5. Other applications.
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This book is based on the work from world-famous experts on the application of DL for vehicle networks. It consists of the following five parts: 1. DL for vehicle safety and security, 2. DL for effective vehicle communications, 3. DL for vehicle control, 4. DL for information management, 5. Other applications.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Produktdetails
- Produktdetails
- Verlag: Taylor & Francis Ltd (Sales)
- Seitenzahl: 342
- Erscheinungstermin: 12. Mai 2023
- Englisch
- Abmessung: 254mm x 178mm x 21mm
- Gewicht: 835g
- ISBN-13: 9781032041377
- ISBN-10: 1032041374
- Artikelnr.: 67400033
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- 06621 890
- Verlag: Taylor & Francis Ltd (Sales)
- Seitenzahl: 342
- Erscheinungstermin: 12. Mai 2023
- Englisch
- Abmessung: 254mm x 178mm x 21mm
- Gewicht: 835g
- ISBN-13: 9781032041377
- ISBN-10: 1032041374
- Artikelnr.: 67400033
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- 06621 890
Dr. Fei Hu is a professor in the department of Electrical and Computer Engineering at the University of Alabama. He has published over 10 technical books with CRC press. His research focus includes cyber security and networking. He obtained his Ph.D. degrees at Tongji University (Shanghai, China) in the field of Signal Processing (in 1999), and at Clarkson University (New York, USA) in Electrical and Computer Engineering (in 2002). He has published over 200 journal/conference papers and books. Dr. Hu's research has been supported by U.S. National Science Foundation, Cisco, Sprint, and other sources. He won the school's President's Faculty Research Award (<1% faculty were awarded each year) in 2020. Dr. Iftikhar Rasheed has already published many book chapters and journal papers. He is currently an Assistant Professor in the Department of Telecommunication Engineering at The Islamia University Bahawalpur, Pakistan. He obtained his Ph.D. degrees at the University of Alabama, Tuscaloosa, Alabama, USA in the field of Electrical Engineering (in 2020). His research interests include wireless communications, 5G cellular systems, and artificial intelligence, vehicle to everything (V2X) communications, and cybersecurity.
Part I. Deep Learning for Vehicle Safety and Security
1. Deep Learning for Vehicle Safety. 2. Deep Learning for Driver Drowsiness
Classification for a Safe Vehicle Application. 3. A Deep Learning
Perspective on Connected Automated Vehicle (CAV) Cybersecurity and Threat
Intelligence..
Part II. Deep Learning for Vehicle Communications
4. Deep Learning for UAV Network Optimization. 5. State-of-the-Art in PHY
Layer Deep Learning for Future Wireless Communication Systems and Networks.
6. Deep Learning-Based Index Modulation Systems for Vehicle Communications
. 7. Deep Reinforcement Learning Applications in Connected-Automated
Transportation Systems.
Part III. Deep Learning for Vehicle Control
8. Vehicle Emission Control on Road with Temporal Träc Information using
Deep Reinforcement Learning. 9. Load Prediction of Electric Vehicle
Charging Pile. 10. Deep Learning for Autonomous Vehicles: A Vision-Based
Approach to Self-Adapted Robust Control.
Part IV. DL for Information Management
11. A Natural Language Processing Based Approach for Automating IoT Search.
12. Towards Incentive-Compatible Vehicular Crowdsensing: A Reinforcement
Learning-Based Approach. 13. Sub-Signal Detection from Noisy Complex
Signals Using Deep Learning and Mathematical Morphology.
Part V. Miscellaneous
14. The Basics of Deep Learning Algorithms and their effect on driving
behavior and vehicle communications. 15. Integrated Simulation of Deep
Learning, Computer Vision and Physical Layer of UAV and Ground Vehicle
Networks.
1. Deep Learning for Vehicle Safety. 2. Deep Learning for Driver Drowsiness
Classification for a Safe Vehicle Application. 3. A Deep Learning
Perspective on Connected Automated Vehicle (CAV) Cybersecurity and Threat
Intelligence..
Part II. Deep Learning for Vehicle Communications
4. Deep Learning for UAV Network Optimization. 5. State-of-the-Art in PHY
Layer Deep Learning for Future Wireless Communication Systems and Networks.
6. Deep Learning-Based Index Modulation Systems for Vehicle Communications
. 7. Deep Reinforcement Learning Applications in Connected-Automated
Transportation Systems.
Part III. Deep Learning for Vehicle Control
8. Vehicle Emission Control on Road with Temporal Träc Information using
Deep Reinforcement Learning. 9. Load Prediction of Electric Vehicle
Charging Pile. 10. Deep Learning for Autonomous Vehicles: A Vision-Based
Approach to Self-Adapted Robust Control.
Part IV. DL for Information Management
11. A Natural Language Processing Based Approach for Automating IoT Search.
12. Towards Incentive-Compatible Vehicular Crowdsensing: A Reinforcement
Learning-Based Approach. 13. Sub-Signal Detection from Noisy Complex
Signals Using Deep Learning and Mathematical Morphology.
Part V. Miscellaneous
14. The Basics of Deep Learning Algorithms and their effect on driving
behavior and vehicle communications. 15. Integrated Simulation of Deep
Learning, Computer Vision and Physical Layer of UAV and Ground Vehicle
Networks.
Part I. Deep Learning for Vehicle Safety and Security
1. Deep Learning for Vehicle Safety. 2. Deep Learning for Driver Drowsiness
Classification for a Safe Vehicle Application. 3. A Deep Learning
Perspective on Connected Automated Vehicle (CAV) Cybersecurity and Threat
Intelligence..
Part II. Deep Learning for Vehicle Communications
4. Deep Learning for UAV Network Optimization. 5. State-of-the-Art in PHY
Layer Deep Learning for Future Wireless Communication Systems and Networks.
6. Deep Learning-Based Index Modulation Systems for Vehicle Communications
. 7. Deep Reinforcement Learning Applications in Connected-Automated
Transportation Systems.
Part III. Deep Learning for Vehicle Control
8. Vehicle Emission Control on Road with Temporal Träc Information using
Deep Reinforcement Learning. 9. Load Prediction of Electric Vehicle
Charging Pile. 10. Deep Learning for Autonomous Vehicles: A Vision-Based
Approach to Self-Adapted Robust Control.
Part IV. DL for Information Management
11. A Natural Language Processing Based Approach for Automating IoT Search.
12. Towards Incentive-Compatible Vehicular Crowdsensing: A Reinforcement
Learning-Based Approach. 13. Sub-Signal Detection from Noisy Complex
Signals Using Deep Learning and Mathematical Morphology.
Part V. Miscellaneous
14. The Basics of Deep Learning Algorithms and their effect on driving
behavior and vehicle communications. 15. Integrated Simulation of Deep
Learning, Computer Vision and Physical Layer of UAV and Ground Vehicle
Networks.
1. Deep Learning for Vehicle Safety. 2. Deep Learning for Driver Drowsiness
Classification for a Safe Vehicle Application. 3. A Deep Learning
Perspective on Connected Automated Vehicle (CAV) Cybersecurity and Threat
Intelligence..
Part II. Deep Learning for Vehicle Communications
4. Deep Learning for UAV Network Optimization. 5. State-of-the-Art in PHY
Layer Deep Learning for Future Wireless Communication Systems and Networks.
6. Deep Learning-Based Index Modulation Systems for Vehicle Communications
. 7. Deep Reinforcement Learning Applications in Connected-Automated
Transportation Systems.
Part III. Deep Learning for Vehicle Control
8. Vehicle Emission Control on Road with Temporal Träc Information using
Deep Reinforcement Learning. 9. Load Prediction of Electric Vehicle
Charging Pile. 10. Deep Learning for Autonomous Vehicles: A Vision-Based
Approach to Self-Adapted Robust Control.
Part IV. DL for Information Management
11. A Natural Language Processing Based Approach for Automating IoT Search.
12. Towards Incentive-Compatible Vehicular Crowdsensing: A Reinforcement
Learning-Based Approach. 13. Sub-Signal Detection from Noisy Complex
Signals Using Deep Learning and Mathematical Morphology.
Part V. Miscellaneous
14. The Basics of Deep Learning Algorithms and their effect on driving
behavior and vehicle communications. 15. Integrated Simulation of Deep
Learning, Computer Vision and Physical Layer of UAV and Ground Vehicle
Networks.