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
(Re)$^2$H2O: Autonomous Driving Scenario Generation via Reversely Regularized Hybrid Offline-and-Online Reinforcement Learning
Haoyi Niu, Kun Ren, Yizhou Xu, Ziyuan Yang, Yichen Lin, Yi Zhang, Jianming Hu
Online Black-Box Confidence Estimation of Deep Neural Networks
Fabian Woitschek, Georg Schneider
DuEqNet: Dual-Equivariance Network in Outdoor 3D Object Detection for Autonomous Driving
Xihao Wang, Jiaming Lei, Hai Lan, Arafat Al-Jawari, Xian Wei
Generative AI-empowered Simulation for Autonomous Driving in Vehicular Mixed Reality Metaverses
Minrui Xu, Dusit Niyato, Junlong Chen, Hongliang Zhang, Jiawen Kang, Zehui Xiong, Shiwen Mao, Zhu Han
Navya3DSeg -- Navya 3D Semantic Segmentation Dataset & split generation for autonomous vehicles
Alexandre Almin, Léo Lemarié, Anh Duong, B Ravi Kiran
Surround-View Vision-based 3D Detection for Autonomous Driving: A Survey
Apoorv Singh, Varun Bankiti
EnergyShield: Provably-Safe Offloading of Neural Network Controllers for Energy Efficiency
Mohanad Odema, James Ferlez, Goli Vaisi, Yasser Shoukry, Mohammad Abdullah Al Faruque
Review of Deep Reinforcement Learning for Autonomous Driving
B. Udugama