Advanced Driver Intention Inference: Theory and Design

Advanced Driver Intention Inference: Theory and Design

ISBN-10:
0128191139
ISBN-13:
9780128191132
Pub. Date:
03/18/2020
Publisher:
Elsevier Science
ISBN-10:
0128191139
ISBN-13:
9780128191132
Pub. Date:
03/18/2020
Publisher:
Elsevier Science
Advanced Driver Intention Inference: Theory and Design

Advanced Driver Intention Inference: Theory and Design

$130.0
Current price is , Original price is $130.0. You
$130.00 
  • SHIP THIS ITEM
    Qualifies for Free Shipping
  • PICK UP IN STORE
    Check Availability at Nearby Stores

Overview

Advanced Driver Intention Inference: Theory and Design describes one of the most important function for future ADAS, namely, the driver intention inference. The book contains the state-of-art knowledge on the construction of driver intention inference system, providing a better understanding on how the human driver intention mechanism will contribute to a more naturalistic on-board decision system for automated vehicles.


Product Details

ISBN-13: 9780128191132
Publisher: Elsevier Science
Publication date: 03/18/2020
Pages: 258
Product dimensions: 7.50(w) x 9.25(h) x (d)

About the Author

Yang Xing received his Ph. D. degree from Cranfield University, UK, in 2018. He is currently a research fellow with the department of mechanical and aerospace engineering at Nanyang Technological University, Singapore. His research interests include machine learning, driver behavior modeling, intelligent multi-agent collaboration, and intelligent/autonomous vehicles. His work focuses on the understanding of driver behaviors using machine-learning methods and intelligent and automated vehicle design. He received the IV2018 Best Workshop/Special Issue Paper Award. Dr. Xing serves as a Guest Editor for IEEE Internet of Thing, and he is an active reviewer for IEEE Transactions on Vehicular Technology, Industrial Electronics, and Intelligent Transportation Systems.

Dr Chen Lv is an Assistant Professor at the School of Mechanical and Aerospace Engineering and the Cluster Director in Future Mobility Solutions at Nanyang Technological University. His research focuses on intelligent vehicles, automated driving, and human-machine systems, where he has contributed 2 books, more than 100 papers, and obtained 12 Chinese patents. He serves as Associate Editor for IEEE T-ITS, IEEE TVT, and IEEE T-IV. He received IEEE IV Best Workshop/Special Session Paper Award in 2018, Automotive Innovation Best Paper Award in 2020, the winner of Waymo Open Dataset Challenges at CVPR 2021, and Machines Young Investigator Award in 2022.

Dongpu Cao received the Ph.D. degree from Concordia University, Canada, in 2008. He is currently an Associate Professor at University of Waterloo, Canada. His research focuses on vehicle dynamics and control, automated driving and parallel driving, where he has contributed more than 100 publications and 1 US patent. He received the ASME AVTT’2010 Best Paper Award and 2012 SAE Arch T. Colwell Merit Award. Dr. Cao serves as an Associate Editor for IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY, IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS, IEEE/ASME TRANSACTIONS ON MECHATRONICS and ASME JOURNAL OF DYNAMIC SYSTEMS, MEASUREMENT, AND CONTROL. He has been a Guest Editor for VEHICLE SYSTEM DYNAMICS, and IEEE TRANSACTIONS ON HUMAN-MACHINE SYSTEMS. He serves on the SAE International Vehicle Dynamics Standards Committee and a few ASME, SAE, IEEE technical committees.

Table of Contents

PART I: INTRODUCTION AND MOTIVATION1. Introduction and Motivation

PART II: LITERATURE REVIEW. State-of-art of driver intention inference 2. Survey to Driver Intention Inference

PART III: TRAFFIC CONTEXT PERCEPTION. Integrated lane detection systems3. Survey to Lane Detection Systems Integration and Evaluation4. Integrated Lane Detection Systems Design

PART IV: DRIVER BEHAVIOUR REASONING. Driving actions and secondary tasks recognition5. Driver Behaviour Recognition with Feature Evaluation6. Driver Behaviour Detection with an End-to-End Approach

PART V: DRIVER BRAKING AND LANE CHANGE MANOEUVERS. Intention inference7. Driver Braking Intensity Classification and Quantitative Inference 8. Driver Lane Change Intention Inference

PART VI: CONCLUSION AND FINAL REMARKS9. Conclusions, Discussions and Directions for Future Work

What People are Saying About This

From the Publisher

Presents cutting-edge technologies on the analysis of human driver and their interaction with future intelligent vehicles

From the B&N Reads Blog

Customer Reviews