Trajectory Prediction
Trajectory prediction focuses on forecasting the future movement of objects, particularly crucial for autonomous systems like self-driving cars and robots. Current research emphasizes improving prediction accuracy and robustness, especially in complex, uncertain environments, using diverse model architectures such as transformers, graph neural networks, and diffusion models, often incorporating multimodal data (e.g., images, LiDAR, maps) and addressing challenges like uncertainty quantification and out-of-distribution generalization. This field is vital for enhancing the safety and efficiency of autonomous systems and has significant implications for various applications, including robotics, traffic management, and assistive technologies.
Papers
Multimodal Manoeuvre and Trajectory Prediction for Automated Driving on Highways Using Transformer Networks
Sajjad Mozaffari, Mreza Alipour Sormoli, Konstantinos Koufos, Mehrdad Dianati
Uncovering the Missing Pattern: Unified Framework Towards Trajectory Imputation and Prediction
Yi Xu, Armin Bazarjani, Hyung-gun Chi, Chiho Choi, Yun Fu
Geometric Deep Learning for Autonomous Driving: Unlocking the Power of Graph Neural Networks With CommonRoad-Geometric
Eivind Meyer, Maurice Brenner, Bowen Zhang, Max Schickert, Bilal Musani, Matthias Althoff
Physics Constrained Motion Prediction with Uncertainty Quantification
Renukanandan Tumu, Lars Lindemann, Truong Nghiem, Rahul Mangharam