Anadvanced integrated framework for moving object tracking

Journal of Zhejiang University SCIENCE C - Tập 15 - Trang 861-877 - 2014
Gwang-Min Choe1,2, Tian-jiang Wang1, Fang Liu1, Chun-Hwa Choe2, Hyo-Son So2, Chol-Ung Pak3
1School of Computer Science and Technology, Huazhong University of Science and Technology, Wuhan, China
2School of Computer Science and Technology, Kim Il Sung University, Pyongyang, DPR of Korea
3School of Wireless Engineering, Huichon Institute of Technology, Huichon, DPR of Korea

Tóm tắt

This paper first introduces the concept of a geogram that captures richer features to represent the objects. The spatiogram contains some moments upon the coordinates of the pixels corresponding to each bin, while the geogram contains information about the perimeter of grouped regions in addition to features in the spatiogram. Then we consider that a convergence process of mean shift is divided into obvious dynamic and steady states, and introduce a hybrid technique of feature description, to control the convergence process. Also, we propose a spline resampling to control the balance between computational cost and accuracy of particle filtering. Finally, we propose a boosting-refining approach, which is boosting the particles positioned in the ill-posed condition instead of eliminating the ill-posed particles, to refine the particles. It enables the estimation of the object state to obtain high accuracy. Experimental results show that our approach has promising discriminative capability in comparison with the state-of-the-art approaches.

Tài liệu tham khảo

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