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Learning Multi-Task Correlation Particle Filters for Visual Tracking.

Authors :
Zhang, Tianzhu
Xu, Changsheng
Yang, Ming-Hsuan
Source :
IEEE Transactions on Pattern Analysis & Machine Intelligence. 2/1/2019, Vol. 41 Issue 2, p365-378. 14p.
Publication Year :
2019

Abstract

In this paper, we propose a multi-task correlation particle filter (MCPF) for robust visual tracking. We first present the multi-task correlation filter (MCF) that takes the interdependencies among different object parts and features into account to learn the correlation filters jointly. Next, the proposed MCPF is introduced to exploit and complement the strength of a MCF and a particle filter. Compared with existing tracking methods based on correlation filters and particle filters, the proposed MCPF enjoys several merits. First, it exploits the interdependencies among different features to derive the correlation filters jointly, and makes the learned filters complement and enhance each other to obtain consistent responses. Second, it handles partial occlusion via a part-based representation, and exploits the intrinsic relationship among local parts via spatial constraints to preserve object structure and learn the correlation filters jointly. Third, it effectively handles large scale variation via a sampling scheme by drawing particles at different scales for target object state estimation. Fourth, it shepherds the sampled particles toward the modes of the target state distribution via the MCF, and effectively covers object states well using fewer particles than conventional particle filters, thereby resulting in robust tracking performance and low computational cost. Extensive experimental results on four challenging benchmark datasets demonstrate that the proposed MCPF tracking algorithm performs favorably against the state-of-the-art methods. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
01628828
Volume :
41
Issue :
2
Database :
Academic Search Index
Journal :
IEEE Transactions on Pattern Analysis & Machine Intelligence
Publication Type :
Academic Journal
Accession number :
134073112
Full Text :
https://doi.org/10.1109/TPAMI.2018.2797062