Autonomous Driving
Autonomous driving research aims to develop vehicles capable of navigating and operating without human intervention, prioritizing safety and efficiency. Current efforts heavily focus on improving perception (using techniques like 3D Gaussian splatting and Bird's-Eye-View representations), prediction (leveraging diffusion models, transformers, and Bayesian games to handle uncertainty), and planning (employing reinforcement learning, large language models, and hierarchical approaches for decision-making). These advancements are crucial for enhancing the reliability and safety of autonomous vehicles, with significant implications for transportation systems and the broader AI community.
Papers
Neural World Models for Computer Vision
Anthony Hu
One-Shot Learning of Visual Path Navigation for Autonomous Vehicles
Zhongying CuiZhu, Francois Charette, Amin Ghafourian, Debo Shi, Matthew Cui, Anjali Krishnamachar, Iman Soltani
Sim-on-Wheels: Physical World in the Loop Simulation for Self-Driving
Yuan Shen, Bhargav Chandaka, Zhi-hao Lin, Albert Zhai, Hang Cui, David Forsyth, Shenlong Wang
UAP-BEV: Uncertainty Aware Planning using Bird's Eye View generated from Surround Monocular Images
Vikrant Dewangan, Basant Sharma, Tushar Choudhary, Sarthak Sharma, Aakash Aanegola, Arun K. Singh, K. Madhava Krishna
An Efficient Transformer for Simultaneous Learning of BEV and Lane Representations in 3D Lane Detection
Ziye Chen, Kate Smith-Miles, Bo Du, Guoqi Qian, Mingming Gong
NeMO: Neural Map Growing System for Spatiotemporal Fusion in Bird's-Eye-View and BDD-Map Benchmark
Xi Zhu, Xiya Cao, Zhiwei Dong, Caifa Zhou, Qiangbo Liu, Wei Li, Yongliang Wang
4D Millimeter-Wave Radar in Autonomous Driving: A Survey
Zeyu Han, Jiahao Wang, Zikun Xu, Shuocheng Yang, Lei He, Shaobing Xu, Jianqiang Wang, Keqiang Li
1st Place Solution for PVUW Challenge 2023: Video Panoptic Segmentation
Tao Zhang, Xingye Tian, Haoran Wei, Yu Wu, Shunping Ji, Xuebo Wang, Xin Tao, Yuan Zhang, Pengfei Wan
Confidence-based federated distillation for vision-based lane-centering
Yitao Chen, Dawei Chen, Haoxin Wang, Kyungtae Han, Ming Zhao
Risk-Aware Reward Shaping of Reinforcement Learning Agents for Autonomous Driving
Lin-Chi Wu, Zengjie Zhang, Sofie Haesaert, Zhiqiang Ma, Zhiyong Sun
Bridging the Domain Gap between Synthetic and Real-World Data for Autonomous Driving
Xiangyu Bai, Yedi Luo, Le Jiang, Aniket Gupta, Pushyami Kaveti, Hanumant Singh, Sarah Ostadabbas
TOFG: A Unified and Fine-Grained Environment Representation in Autonomous Driving
Zihao Wen, Yifan Zhang, Xinhong Chen, Jianping Wang
Probabilistic Uncertainty Quantification of Prediction Models with Application to Visual Localization
Junan Chen, Josephine Monica, Wei-Lun Chao, Mark Campbell
Efficient Learning of Urban Driving Policies Using Bird's-Eye-View State Representations
Raphael Trumpp, Martin Büchner, Abhinav Valada, Marco Caccamo