作者
Zhuwen Li, Jiaming Guo, Loong-Fah Cheong, Steven Zhiying Zhou
发表日期
2013
研讨会论文
Proceedings of the IEEE international conference on computer vision
页码范围
1369-1376
简介
This paper addresses real-world challenges in the motion segmentation problem, including perspective effects, missing data, and unknown number of motions. It first formulates the 3-D motion segmentation from two perspective views as a subspace clustering problem, utilizing the epipolar constraint of an image pair. It then combines the point correspondence information across multiple image frames via a collaborative clustering step, in which tight integration is achieved via a mixed norm optimization scheme. For model selection, we propose an over-segment and merge approach, where the merging step is based on the property of the 1-norm of the mutual sparse representation of two oversegmented groups. The resulting algorithm can deal with incomplete trajectories and perspective effects substantially better than state-of-the-art two-frame and multi-frame methods. Experiments on a 62-clip dataset show the significant superiority of the proposed idea in both segmentation accuracy and model selection.
引用总数
2014201520162017201820192020202120222023202446615101135834
学术搜索中的文章
Z Li, J Guo, LF Cheong, SZ Zhou - Proceedings of the IEEE international conference on …, 2013