Motion Prior
Motion priors are learned representations of movement patterns used to improve the accuracy and efficiency of various computer vision and robotics tasks. Current research focuses on integrating motion priors into diverse model architectures, including diffusion models, transformers, and variational autoencoders, to address challenges like human motion estimation from video, trajectory prediction for autonomous vehicles, and video generation. These advancements are significantly impacting fields such as robotics, autonomous driving, and animation by enabling more realistic and robust systems capable of handling complex, dynamic environments.
Papers
MLP: Motion Label Prior for Temporal Sentence Localization in Untrimmed 3D Human Motions
Sheng Yan, Mengyuan Liu, Yong Wang, Yang Liu, Chen Chen, Hong Liu
Motion-aware Latent Diffusion Models for Video Frame Interpolation
Zhilin Huang, Yijie Yu, Ling Yang, Chujun Qin, Bing Zheng, Xiawu Zheng, Zikun Zhou, Yaowei Wang, Wenming Yang