Review of Learning-based Longitudinal Motion Planning for Autonomous Vehicles: Research Gaps between Self-driving and Traffic Congestion
Hao Zhou, Jorge Laval, Anye Zhou, Yu Wang, Wenchao Wu, Zhu Qing and, Srinivas Peeta

TL;DR
This review analyzes how current learning-based longitudinal motion planning for autonomous vehicles impacts traffic congestion, highlighting gaps in datasets, methods, and industry focus, and proposing future research directions for congestion mitigation.
Contribution
It provides a comprehensive survey of current mMP techniques, identifies key research gaps, and suggests integrating congestion mitigation strategies into future autonomous vehicle motion planning.
Findings
Current datasets lack congestion scenarios and features.
Industry mainly uses behavior cloning, not reinforcement learning.
Most focus on safety, neglecting traffic congestion impact.
Abstract
Self-driving technology companies and the research community are accelerating their pace to use machine learning longitudinal motion planning (mMP) for autonomous vehicles (AVs). This paper reviews the current state of the art in mMP, with an exclusive focus on its impact on traffic congestion. We identify the availability of congestion scenarios in current datasets, and summarize the required features for training mMP. For learning methods, we survey the major methods in both imitation learning and non-imitation learning. We also highlight the emerging technologies adopted by some leading AV companies, e.g. Tesla, Waymo, and Comma.ai. We find that: i) the AV industry has been mostly focusing on the long tail problem related to safety and overlooked the impact on traffic congestion, ii) the current public self-driving datasets have not included enough congestion scenarios, and mostly…
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