Anti-occlusion arithmetic for moving object tracking
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Anti-occlusion arithmetic for moving object tracking
Optics and Precision EngineeringVol. 15, Issue 2, Pages: 267-271(2007)
作者机构:
1. 中国科学院 长春光学精密机械与物理研究所,吉林 长春,中国,130033
2. 长春理工大学,吉林 长春,130022
3. 中国科学院 研究生院 北京,100039
4. 东北师范大学 物理系,吉林 长春,130024
作者简介:
基金信息:
DOI:
CLC:TP391;TP301.6
Received:15 April 2006,
Revised:19 July 2006,
Published Online:20 February 2007,
Published:20 February 2007
稿件说明:
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SUN Zhong-sen, SUN Jun-xi, SONG Jian-zhong, et al. Anti-occlusion arithmetic for moving object tracking[J]. Optics and precision engineering, 2007, 15(2): 267-271.
DOI:
SUN Zhong-sen, SUN Jun-xi, SONG Jian-zhong, et al. Anti-occlusion arithmetic for moving object tracking[J]. Optics and precision engineering, 2007, 15(2): 267-271.DOI:
Anti-occlusion arithmetic for moving object tracking
A new method with occlusion for color-based object tracking is presented. The proposed technique employs mean shift iterations to derive the object candidate which is the most similar to a given object model
then uses Kalman filter to estimate the real states of the object. A color-based histogram with different weights that is robust for partial occlusion is selected as the target feature. The similarity between the target model and the candidates is expressed by a metric on the Bhattacharyya coefficient. An occlusion coefficient is proposed. When the object is occluded seriously
the observation cannot be used for updating by Kalman filter
the former state of the object is regarded as the current state. The simulation experiments show that the tracking is robust to partial and serious occlusion.
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references
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