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IEICE TRANSACTIONS on Information

Adaptive Updating Probabilistic Model for Visual Tracking

Kai FANG, Shuoyan LIU, Chunjie XU, Hao XUE

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Summary :

In this paper, an adaptive updating probabilistic model is proposed to track an object in real-world environment that includes motion blur, illumination changes, pose variations, and occlusions. This model adaptively updates tracker with the searching and updating process. The searching process focuses on how to learn appropriate tracker and updating process aims to correct it as a robust and efficient tracker in unconstrained real-world environments. Specifically, according to various changes in an object's appearance and recent probability matrix (TPM), tracker probability is achieved in Expectation-Maximization (EM) manner. When the tracking in each frame is completed, the estimated object's state is obtained and then fed into update current TPM and tracker probability via running EM in a similar manner. The highest tracker probability denotes the object location in every frame. The experimental result demonstrates that our method tracks targets accurately and robustly in the real-world tracking environments.

Publication
IEICE TRANSACTIONS on Information Vol.E100-D No.4 pp.914-917
Publication Date
2017/04/01
Publicized
2017/01/06
Online ISSN
1745-1361
DOI
10.1587/transinf.2016EDL8188
Type of Manuscript
LETTER
Category
Pattern Recognition

Authors

Kai FANG
  China Academy of Railway Sciences
Shuoyan LIU
  China Academy of Railway Sciences
Chunjie XU
  China Academy of Railway Sciences
Hao XUE
  China Academy of Railway Sciences

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