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
A Wearable Data Collection System for Studying Micro-Level E-Scooter Behavior in Naturalistic Road Environment
Avinash Prabu, Dan Shen, Renran Tian, Stanley Chien, Lingxi Li, Yaobin Chen, Rini Sherony
DaDe: Delay-adaptive Detector for Streaming Perception
Wonwoo Jo, Kyungshin Lee, Jaewon Baik, Sangsun Lee, Dongho Choi, Hyunkyoo Park
Multi Lane Detection
Fei Wu, Luoyu Chen
Vision-Based Environmental Perception for Autonomous Driving
Fei Liu, Zihao Lu, Xianke Lin
A Non-linear MPC Local Planner for Tractor-Trailer Vehicles in Forward and Backward Maneuvering
Behnam Moradi, Mehran Mehrandezh
ParallelNet: Multi-mode Trajectory Prediction by Multi-mode Trajectory Fusion
Fei Wu, Luoyu Chen, Hao Lu
Planning-oriented Autonomous Driving
Yihan Hu, Jiazhi Yang, Li Chen, Keyu Li, Chonghao Sima, Xizhou Zhu, Siqi Chai, Senyao Du, Tianwei Lin, Wenhai Wang, Lewei Lu, Xiaosong Jia, Qiang Liu, Jifeng Dai, Yu Qiao, Hongyang Li