Robust Online Learned Spatio-Temporal Context Model for Visual Tracking

IEEE Transactions on Image Processing(2014)

引用 50|浏览84
暂无评分
摘要
Visual tracking is an important but challenging problem in the computer vision field. In the real world, the appearances of the target and its surroundings change continuously over space and time, which provides effective information to track the target robustly. However, enough attention has not been paid to the spatio-temporal appearance information in previous works. In this paper, a robust spatio-temporal context model based tracker is presented to complete the tracking task in unconstrained environments. The tracker is constructed with temporal and spatial appearance context models. The temporal appearance context model captures the historical appearance of the target to prevent the tracker from drifting to the background in a long-term tracking. The spatial appearance context model integrates contributors to build a supporting field. The contributors are the patches with the same size of the target at the key-points automatically discovered around the target. The constructed supporting field provides much more information than the appearance of the target itself, and thus, ensures the robustness of the tracker in complex environments. Extensive experiments on various challenging databases validate the superiority of our tracker over other state-of-the-art trackers.
更多
查看译文
关键词
online boosting,unconstrained environments,visual tracking,temporal appearance context model,learning (artificial intelligence),posterior probability,computer vision field,markov processes,spatio-temporal context,object tracking,computer vision,multiple subspaces learning,robust online learned spatio-temporal context model,markovian state transition process,spatial appearance context model,spatio-temporal appearance information,long-term tracking,historical appearance,learning artificial intelligence
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要