Particle Video: Long-Range Motion Estimation Using Point Trajectories

作者:Peter Sand, Seth Teller

摘要

This paper describes a new approach to motion estimation in video. We represent video motion using a set of particles. Each particle is an image point sample with a long-duration trajectory and other properties. To optimize particle trajectories we measure appearance consistency along the particle trajectories and distortion between the particles. The resulting motion representation is useful for a variety of applications and cannot be directly obtained using existing methods such as optical flow or feature tracking. We demonstrate the algorithm on challenging real-world videos that include complex scene geometry, multiple types of occlusion, regions with low texture, and non-rigid deformations.

论文关键词:Video motion estimation, Optical flow, Feature tracking

论文评审过程:

论文官网地址:https://doi.org/10.1007/s11263-008-0136-6