About
Welcome to the 2023 Symposium on Machine Learning for Autonomous Driving collocated with NeurIPS!
Autonomous vehicles (AVs) offer a rich source of high-impact research problems for the machine learning (ML) community; including perception, state estimation, probabilistic modeling, time series forecasting, gesture recognition, robustness guarantees, real-time constraints, user-machine communication, multi-agent planning, and intelligent infrastructure. Further, the interaction between ML subfields towards a common goal of autonomous driving can catalyze interesting inter-field discussions that spark new avenues of research, which this symposium aims to promote. As an application of ML, autonomous driving has the potential to greatly improve society by reducing road accidents, giving independence to those unable to drive, and even inspiring younger generations with tangible examples of ML-based technology clearly visible on local streets. All are welcome to attend! This will be the 8th event in this series. Previous workshops in 2016, 2017, 2018, 2019, 2020, 2021, 2022 enjoyed wide participation from both academia and industry.
Attending: • Attend in person: please register (free) ml4ad2023.eventbrite.com • Attend virtually: no registration needed, simply join us on zoom • Authors: please bring a poster up to 24wide x 36high inches
Post Event: all videos now avilable on YouTube
Speakers
Morning speakers
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Wei-Lun Chao
Assistant Professor
Ohio State University -
Barbara Rakitsch
Research Scientist
Bosch -
Dhruv Shah
PhD candidate
UC Berkeley
Afternoon speakers
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John Subosits
Research Manager
Toyota Research Institute -
Aleksandr Petiushko
Head of ML Research
Nuro -
Boris Ivanovic
Research Manager
NVIDIA Research
Schedule
Thursday December 14th, 2023. All times are in Central Standard Time (UTC-6). Current time is
Time | Event | Title |
---|---|---|
08:55 | Welcome | |
09:00 | Wei-Lun Chao Ohio State University | Learning to Perceive by Leveraging the Semantic Cues in Raw Data |
09:45 | Posters Session 1 | |
11:00 | Barbara Rakitsch Bosch | Navigating the Future: Leveraging Large Language Models for Autonomous Driving |
11:45 | Dhruv Shah UC Berkeley | Learning General-Purpose Robot Navigation |
12:30 | Lunch and Posters | |
13:30 | John Subosits Toyota Research Institute | Learning at the Limits: ML for High Performance Driving |
14:15 | Aleksandr Petiushko Nuro | Scaling laws in Autonomy and Behavior |
15:00 | Posters Session 2 | |
15:45 | Boris Ivanovic NVIDIA Research | Architecting Next-Generation Autonomous Vehicle Stacks |
16:30 | CARLA Challenge German Ros | CARLA Autonomous Driving Challenge 2023 |
17:30 | Closing Remarks and Social |
Challenge
The CARLA Autonomous Driving Challenge 2023 winners will present their solutions as part of the symposium. Details here.
Papers
Extended Abstracts
Evaluation of Large Language Models for Decision Making in Autonomous Driving
Kotaro Tanahashi, Yuichi Inoue, Yu Yamaguchi, Hidetatsu Yaginuma, Daiki Shiotsuka, Hiroyuki Shimatani, Kohei Iwamasa, Yushiaki Inoue, Takafumi Yamaguchi, Koki Igari, Tsukasa Horinouchi, Kento Tokuhiro, Yugo Tokuchi, Shunsuke Aoki
Full Papers
Development and Assessment of Autonomous Vehicles in Both Fully Automated and Mixed Traffic Conditions
Ahmed Abdelrahman
Data-parallel Real-Time Perception System with Partial GPU Acceleration for Autonomous Driving
Sol Ahn*, Seungha Kim*, Ho Kang, Jong-Chan Kim
Explainable Multi-Camera 3D Object Detection with Transformer-Based Saliency Maps
Till Beemelmanns, Wassim Zahr, Lutz Eckstein
Learn Thy Enemy: Online, Task-Aware Opponent Modeling in Autonomous Racing
Letian Chen, Shawn Manuel, James Delgado, John Subosits, Paul Tylkin
Hierarchical End-to-End Autonomous Navigation through Few-Shot Waypoint Detection
Amin Ghafourian*, Zhongying CuiZhu*, Debo Shi, Ian Chuang, Francois Charette, Rithik Sachdeva, Iman Soltani
Waymax: An Accelerated, Data-Driven Simulator for Large-Scale Autonomous Driving Research
Cole Gulino*, Justin Fu*, Wenjie Luo*, George Tucker*, Eli Bronstein, Yiren Lu, Jean Harb, Xinlei Pan, Yan Wang, Xiangyu Chen, John D Co-Reyes, Rishabh Agarwal, Rebecca Roelofs, Yao Lu, Nico Montali, Paul Mougin, Zoey Yang, Brandyn White, Aleksandra Faust, Rowan McAllister, Dragomir Anguelov, Benjamin Sapp
Deception Game: Closing the Safety-Learning Loop for Autonomous Driving
Haimin Hu*, Zixu Zhang*, Kensuke Nakamura, Andrea Bajcsy, Jaime Fernández Fisac
Robust Driving Across Scenarios via Multi-residual Task Learning
Vindula Jayawardana, Sirui Li, Cathy Wu, Yashar Farid, Kentaro Oguchi
ScenarioNet: Open-Source Platform for Large-Scale Traffic Scenario Simulation and Modeling
Quanyi Li*, Zhenghao Peng*, Lan Feng*, Zhizheng Liu, Chenda Duan, Wenjie Mo, Bolei Zhou
Safety-aware Causal Representation for Trustworthy Reinforcement Learning in Autonomous Driving
Haohong Lin, Wenhao Ding, Zuxin Liu, Yaru Niu, Jiacheng Zhu, Yuming Niu, Ding Zhao
Hierarchical Learning-Based Autonomy Simulator
Haolan Liu, Jishen Zhao, Liangjun Zhang
The Waymo Open Sim Agents Challenge
Nico Montali, John Lambert, Paul Mougin, Alex Kuefler, Nicholas Rhinehart, Michelle Li, Cole Gulino, Tristan Emrich, Zoey Yang, Shimon Whiteson, Brandyn White, Dragomir Anguelov
Stackelberg Driver Model for Continual Policy Improvement in Scenario-Based Closed-Loop Autonomous Driving
Haoyi Niu*, Qimao Chen*, Yingyue Li, Yi Zhang, Jianming Hu
Continual Driving Policy Optimization with Closed-Loop Individualized Curricula
Haoyi Niu*, Yizhou Xu*, Xingjian Jiang, Jianming Hu
Learning from Active Human Involvement through Proxy Value Propagation
Zhenghao Peng, Wenjie Mo, Chenda Duan, Quanyi Li, Bolei Zhou
Camera-based Context-aware Traffic Light Detection for Self-Driving Vehicles
Daiki Shiotsuka, Yuto Nakamura, Kohei Iwamasa, Yu Yamaguchi, Shunsuke Aoki
Multi-Constraint Safe RL with Objective Suppression for Safety-Critical Applications
Zihan Zhou, Jonathan Booher, Wei Liu, Aleksandr Petiushko, Animesh Garg
Location
Hilton Garden Inn New Orleans Convention Center, 1001 S Peters St, New Orleans, Louisiana 70130, United States Ground Floor, Mognolia and Camellia Rooms
Organizers
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Aman Sinha thisisaman@waymo.com
is a research scientist at Waymo and co-founder of Trustworthy AI, which was acquired by Waymo in 2021.
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Nigamaa Nayakanti nigamaa@waymo.com
is a research scientist at Waymo working on behaviour prediction modeling for autonomous vehicles.
-
Lars Kunze lars@robots.ox.ac.uk
is a Departmental Lecturer in Robotics in the Oxford Robotics Institute and the Department of Engineering Science at the University of Oxford.
-
Maximilian Naumann Maximilian.Naumann@de.bosch.com
is a research engineer at Bosch Center for Artificial Intelligence.
-
Avikalp Srivastava avikalp@waymo.com
is a staff software engineer at Waymo Research.
-
Jiachen Li jiachen_li@stanford.edu
is a Postdoctoral Scholar at Stanford University working on scene understanding and decision making for intelligent systems.
-
Xinshuo Weng xweng@nvidia.com
is a research scientist at NVIDIA Autonomous Vehicle Research.
-
Rowan McAllister mcallister@waymo.com
is a staff research scientist at Waymo working on planning for autonomous vehicles.
Challenge Organizers
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German Ros grossanchez@nvidia.com
is a director in Simulation Ecosystem Development at NVIDIA
-
Guillermo Lopez
is a software engineer at CVC & Embodied AI Foundation
-
Joel Moriana
is a software engineer at CVC & Embodied AI Foundation
-
Vladlen Koltun
is a Distinguished Scientist at Apple.
Program Committee
We thank those who help make this workshop possible!
•
Aayush Ahuja
•
Bahar Azari
•
Daniel Bogdoll
•
Christopher Diehl
•
Wenhao Ding
•
Nemanja Djuric
•
Praneet Dutta
•
Hesham Eraqi
•
Shivam Gautam
•
Paweł Gora
•
Francis Indaheng
•
Nikita Jaipuria
•
Isabel Janez
•
Ameya Joshi
•
Lars Kunze
•
Kanghoon Lee
•
Johannes Lehner
•
Chengxi Li
•
Zhuwen Li
•
Zuxin Liu
•
Hengbo Ma
•
Xiaobai Ma
•
Yuhang Ma
•
Amitangshu Mukherjee
•
Maximilian Naumann
•
Patrick Nguyen
•
Yaru Niu
•
Matthew O'Kelly
•
Tanvir Parhar
•
Nishant Rai
•
Daniele Reda
•
Madhumitha Sakthi
•
Mark Schutera
•
Adam Scibior
•
Ruobing Shen
•
Apoorv Singh
•
Avikalp Srivastava
•
Ho Suk
•
Chen Tang
•
Toan Tran
•
Ákos Utasi
•
Letian Wang
•
Xi Yi
•
Chengyuan Zhang
•
Jiacheng Zhu
Sponsors
We thank Waymo and Toyota Research Institute for generously sponsoring this event.