Adaptive pixel-block based background subtraction using low-rank and block-sparse matrix decomposition

被引:0
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作者
Xuehui Wu
Xiaobo Lu
机构
[1] Southeast University,School of Automation
[2] Southeast University,Key Laboratory of Measurement and Control of Complex Systems of Engineering, Ministry of Education
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关键词
Background subtraction; Random arrangement; Adaptive parameters; Low-rank; Block-sparse;
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摘要
We present three stages of a novel backgrounds subtraction method in this paper: a new pixel-block based randomized arrangement is utilized to preprocess all the frame images, so that low-rank property of background and sparsity of foreground can be separated more easily; different foreground regions have different sparsity, we use a set of adaptive parameters for subtracting foregrounds according to the variances of frame pixels; finally, background model is built via an improved low-rank and block-sparse matrix decomposition based on the proposed adaptive pixel-block background subtraction. All these key measurements guarantee the considerable performance in background subtraction, which are also demonstrated in our experimental results.
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页码:16507 / 16526
页数:19
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