Background Subtraction Based on a Combination of Local Texture and Color

Background subtraction is one of the key techniques in computer vision and video processing. A new background subtraction algorithm is proposed in this paper, which combines local texture and color information to depict background and adopts the idea of mixture of Gaussian that uses multiple modes to represent background model. In order to represent texture better, LBP is modifled. Experiments show that the proposed algorithm has better performance than other ones in most cases.

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