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Dynamic Conditional Imitation Learning for Autonomous Driving | IEEE Journals & Magazine | IEEE Xplore

Dynamic Conditional Imitation Learning for Autonomous Driving


Abstract:

Conditional imitation learning (CIL) trains deep neural networks, in an end-to-end manner, to mimic human driving. This approach has demonstrated suitable vehicle control...Show More

Abstract:

Conditional imitation learning (CIL) trains deep neural networks, in an end-to-end manner, to mimic human driving. This approach has demonstrated suitable vehicle control when following roads, avoiding obstacles, or taking specific turns at intersections to reach a destination. Unfortunately, performance dramatically decreases when deployed to unseen environments and is inconsistent against varying weather conditions. Most importantly, the current CIL fails to avoid static road blockages. In this work, we propose a solution to those deficiencies. First, we fuse the laser scanner with the regular camera streams, at the features level, to overcome the generalization and consistency challenges. Second, we introduce a new efficient Occupancy Grid Mapping (OGM) method along with new algorithms for road blockages avoidance and global route planning. Consequently, our proposed method dynamically detects partial and full road blockages, and guides the controlled vehicle to another route to reach the destination. Following the original CIL work, we demonstrated the effectiveness of our proposal on CARLA simulator urban driving benchmark. Our experiments showed that our model improved consistency against weather conditions by four times and autonomous driving success rate generalization by 52%. Furthermore, our global route planner improved the driving success rate by 37%. Our proposed road blockages avoidance algorithm improved the driving success rate by 27%. Finally, the average kilometers traveled before a collision with a static object increased by 1.5 times. The main source code can be reached at this web page: https://heshameraqi.github.io/dynamic_cil_autonomous_driving.
Published in: IEEE Transactions on Intelligent Transportation Systems ( Volume: 23, Issue: 12, December 2022)
Page(s): 22988 - 23001
Date of Publication: 25 October 2022

ISSN Information:

Author image of Hesham M. Eraqi
Computer Science and Engineering Department, The American University in Cairo, Cairo, Egypt
Hesham M. Eraqi received the Ph.D. degree in computer science and engineering from The American University in Cairo in 2020. He was appointed as a Valeo Senior Expert of artificial intelligence and deep learning in 2018, which is a Technical Director level position where he led the technology development across all the product lines of Valeo Comfort and Driving Assistance Systems (CDA). He worked at Valeo from 2012 to 202...Show More
Hesham M. Eraqi received the Ph.D. degree in computer science and engineering from The American University in Cairo in 2020. He was appointed as a Valeo Senior Expert of artificial intelligence and deep learning in 2018, which is a Technical Director level position where he led the technology development across all the product lines of Valeo Comfort and Driving Assistance Systems (CDA). He worked at Valeo from 2012 to 202...View more
Author image of Mohamed N. Moustafa
Last Mile Geospatial Science Team, Amazon, Bellevue, WA, USA
Mohamed N. Moustafa (Member, IEEE) received the Ph.D. degree in electrical and computer engineering from The City University of New York in 2001. He is currently an Applied Science Manager with Last Mile Geospatial, Amazon, Seattle, WA, USA, where he leads the Machine Learning Team building maps from multiple sources including satellite/aerial/street view imagery and other sensory data. Prior to joining Amazon, he was a P...Show More
Mohamed N. Moustafa (Member, IEEE) received the Ph.D. degree in electrical and computer engineering from The City University of New York in 2001. He is currently an Applied Science Manager with Last Mile Geospatial, Amazon, Seattle, WA, USA, where he leads the Machine Learning Team building maps from multiple sources including satellite/aerial/street view imagery and other sensory data. Prior to joining Amazon, he was a P...View more
Author image of Jens Honer
Driving Assistance Research (DAR), Valeo Schalter und Sensoren GmbH, Bietigheim-Bissingen, Germany
Jens Honer received the Ph.D. degree in theoretical physics (quantum optics) from the University of Stuttgart in 2013. In 2013, he joined Valeo Comfort and Driving Assistance Systems (CDA) to design the first data fusion systems based on radar, LiDAR and cameras with the Systems and Functions Department, which was used in the first mass-produced level 3 autonomous cars by Honda. From 2017 to 2020, he led the algorithm des...Show More
Jens Honer received the Ph.D. degree in theoretical physics (quantum optics) from the University of Stuttgart in 2013. In 2013, he joined Valeo Comfort and Driving Assistance Systems (CDA) to design the first data fusion systems based on radar, LiDAR and cameras with the Systems and Functions Department, which was used in the first mass-produced level 3 autonomous cars by Honda. From 2017 to 2020, he led the algorithm des...View more

Author image of Hesham M. Eraqi
Computer Science and Engineering Department, The American University in Cairo, Cairo, Egypt
Hesham M. Eraqi received the Ph.D. degree in computer science and engineering from The American University in Cairo in 2020. He was appointed as a Valeo Senior Expert of artificial intelligence and deep learning in 2018, which is a Technical Director level position where he led the technology development across all the product lines of Valeo Comfort and Driving Assistance Systems (CDA). He worked at Valeo from 2012 to 2021 on products for many carmakers (OEMs) worldwide, including algorithms in Honda Legend which is the world’s first road-legal level 3 autonomous car with Japan certification in 2021. He is currently an Adjunct Assistant Professor at The American University in Cairo, where he has been working on many research projects applying machine and deep learning methods to computer vision, robotics, and other applications since 2010. He is the Founding CTO and a General Manager of Nahdet Misr AI start-up (developing AI-powered EdTech products, including two apps ranked for over a year in Google Play education top ten charts) and an Advisory Board at EdVentures (the fastest-growing EdTech Venture Capital in MENA region) besides serving as the Chairperson, Editor, and Program Committee at venues, including NeurIPS/ICCV/ECCV/ICRA/ICML. He has five filed patents and over 35 articles published in top IEEE and ACM journals and conferences in his area.
Hesham M. Eraqi received the Ph.D. degree in computer science and engineering from The American University in Cairo in 2020. He was appointed as a Valeo Senior Expert of artificial intelligence and deep learning in 2018, which is a Technical Director level position where he led the technology development across all the product lines of Valeo Comfort and Driving Assistance Systems (CDA). He worked at Valeo from 2012 to 2021 on products for many carmakers (OEMs) worldwide, including algorithms in Honda Legend which is the world’s first road-legal level 3 autonomous car with Japan certification in 2021. He is currently an Adjunct Assistant Professor at The American University in Cairo, where he has been working on many research projects applying machine and deep learning methods to computer vision, robotics, and other applications since 2010. He is the Founding CTO and a General Manager of Nahdet Misr AI start-up (developing AI-powered EdTech products, including two apps ranked for over a year in Google Play education top ten charts) and an Advisory Board at EdVentures (the fastest-growing EdTech Venture Capital in MENA region) besides serving as the Chairperson, Editor, and Program Committee at venues, including NeurIPS/ICCV/ECCV/ICRA/ICML. He has five filed patents and over 35 articles published in top IEEE and ACM journals and conferences in his area.View more
Author image of Mohamed N. Moustafa
Last Mile Geospatial Science Team, Amazon, Bellevue, WA, USA
Mohamed N. Moustafa (Member, IEEE) received the Ph.D. degree in electrical and computer engineering from The City University of New York in 2001. He is currently an Applied Science Manager with Last Mile Geospatial, Amazon, Seattle, WA, USA, where he leads the Machine Learning Team building maps from multiple sources including satellite/aerial/street view imagery and other sensory data. Prior to joining Amazon, he was a Professor with The American University in Cairo, where he led many research projects applying deep learning methods in autonomous driving, human action recognition, and medical diagnosis among others. He has seven U.S. patents and coauthored more than 100 research papers published in international journals and conferences in the field of biometrics, computer vision, image analysis, and machine learning. He is a member of the IEEE Computational Intelligence Society, the IEEE Technical Committee on Pattern Analysis and Machine Intelligence, and the IEEE Smart Cities Committee.
Mohamed N. Moustafa (Member, IEEE) received the Ph.D. degree in electrical and computer engineering from The City University of New York in 2001. He is currently an Applied Science Manager with Last Mile Geospatial, Amazon, Seattle, WA, USA, where he leads the Machine Learning Team building maps from multiple sources including satellite/aerial/street view imagery and other sensory data. Prior to joining Amazon, he was a Professor with The American University in Cairo, where he led many research projects applying deep learning methods in autonomous driving, human action recognition, and medical diagnosis among others. He has seven U.S. patents and coauthored more than 100 research papers published in international journals and conferences in the field of biometrics, computer vision, image analysis, and machine learning. He is a member of the IEEE Computational Intelligence Society, the IEEE Technical Committee on Pattern Analysis and Machine Intelligence, and the IEEE Smart Cities Committee.View more
Author image of Jens Honer
Driving Assistance Research (DAR), Valeo Schalter und Sensoren GmbH, Bietigheim-Bissingen, Germany
Jens Honer received the Ph.D. degree in theoretical physics (quantum optics) from the University of Stuttgart in 2013. In 2013, he joined Valeo Comfort and Driving Assistance Systems (CDA) to design the first data fusion systems based on radar, LiDAR and cameras with the Systems and Functions Department, which was used in the first mass-produced level 3 autonomous cars by Honda. From 2017 to 2020, he led the algorithm design for the next generation environment perception system with Valeo CDA Driving Systems and Functions (DSF) and transitioned in 2020 to his current position with Valeo CDA Driving Advanced Research (DAR) to lead the research of environment perception systems. There, he is working on the perception systems with Valeo Drive4U cars, automated valet parking (type 2), and novel applications with Valeo sensor portfolio. In 2016, he was appointed as a Valeo Expert and since 2020, he has been a Valeo Senior Expert for sensor fusion and environment perception. His research interests include localization, machine learning, environment perception, and extended and multi-target tracking and statistics. He has co-organized a tutorial about multiple extended object tracking and sensor fusion at the 2018 and 2019 International Conference on Information Fusion (FUSION) and the 2021 Intelligent Vehicle Symposium (IV).
Jens Honer received the Ph.D. degree in theoretical physics (quantum optics) from the University of Stuttgart in 2013. In 2013, he joined Valeo Comfort and Driving Assistance Systems (CDA) to design the first data fusion systems based on radar, LiDAR and cameras with the Systems and Functions Department, which was used in the first mass-produced level 3 autonomous cars by Honda. From 2017 to 2020, he led the algorithm design for the next generation environment perception system with Valeo CDA Driving Systems and Functions (DSF) and transitioned in 2020 to his current position with Valeo CDA Driving Advanced Research (DAR) to lead the research of environment perception systems. There, he is working on the perception systems with Valeo Drive4U cars, automated valet parking (type 2), and novel applications with Valeo sensor portfolio. In 2016, he was appointed as a Valeo Expert and since 2020, he has been a Valeo Senior Expert for sensor fusion and environment perception. His research interests include localization, machine learning, environment perception, and extended and multi-target tracking and statistics. He has co-organized a tutorial about multiple extended object tracking and sensor fusion at the 2018 and 2019 International Conference on Information Fusion (FUSION) and the 2021 Intelligent Vehicle Symposium (IV).View more

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