An improved mean shift algorithm for moving object tracking

Moving object tracking is one of the key technologies in video surveillance. Mean shift algorithm fails to track the moving object in complicated environment. In this paper, a new strategy is proposed to improve the tracking ability of mean shift algorithm, in which the contrast between object and b...

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Published in2015 IEEE 28th Canadian Conference on Electrical and Computer Engineering (CCECE) pp. 1425 - 1429
Main Authors Ning Li, Dan Zhang, Xiaorong Gu, Li Huang, Wei Liu, Tao Xu
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.05.2015
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ISBN9781479958276
1479958271
ISSN0840-7789
DOI10.1109/CCECE.2015.7129489

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Summary:Moving object tracking is one of the key technologies in video surveillance. Mean shift algorithm fails to track the moving object in complicated environment. In this paper, a new strategy is proposed to improve the tracking ability of mean shift algorithm, in which the contrast between object and background along with similarity evaluation are applied for generating and updating object model. To eliminate the interference of the most similar features between tracking object and background, the coefficient ratio of the object to surrounding environment is first imported to generate the object model. To make sure the accuracy of updating object model, the effective way that combines similarity evaluation and Kalman filtering prediction is then applied for judge whether the tracking object is sheltered by other objects or background. The experimental results have shown that the proposed method can tack the moving object stably.
ISBN:9781479958276
1479958271
ISSN:0840-7789
DOI:10.1109/CCECE.2015.7129489