Motion Prediction
Motion prediction aims to forecast the future movement of objects, primarily in autonomous driving and human-robot interaction contexts. Current research emphasizes improving prediction accuracy and robustness, particularly using transformer-based architectures, diffusion models, and Bayesian methods, often incorporating multimodal data (e.g., images, LiDAR, text) to enhance contextual understanding and address challenges like occlusion and uncertainty quantification. These advancements are crucial for enhancing the safety and efficiency of autonomous systems and enabling more natural and safe human-robot collaboration.
Papers
FootBots: A Transformer-based Architecture for Motion Prediction in Soccer
Guillem Capellera, Luis Ferraz, Antonio Rubio, Antonio Agudo, Francesc Moreno-Noguer
Integrating occlusion awareness in urban motion prediction for enhanced autonomous vehicle navigation
Vinicius Trentin, Juan Medina-Lee, Antonio Artuñedo, Jorge Villagra