A reconstruction method of dynamic texture video

Dynamic texture augmentation techniques are widely used. It has been a hot spot in the area of computer vision. Reconstruction is a very important technique in dynamic texture augmentation. In this paper we propose an efficient reconstruction method of dynamic texture video. First we present an efficient structure and motion recovery method for dynamic texture video. On the basis of it, a method of reconstruction for texture video augmentation is studied. Experiments show that the method is very efficient in dynamic texture augmentation and overcome more error of traditional method.

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