Motion-based segmentation of image sequences using orientation tensors

نویسنده

  • Gunnar Farnebäck
چکیده

This paper adresses the problem of motion-based segmentation of image sequences. Onemotion estimation algorithm and two segmentation algorithms are presented. The motion estimation is based on 3D orientation tensors and the algorithm can be used to estimate a large class of motion models, including the affine model that is used in the segmentation. The segmentation algorithms are based on a competitive region growing approach.

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تاریخ انتشار 1997