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Segmentation by minimal description

机译:通过最小描述分割

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The authors formulate the segmentation task as a search for a set of descriptions which minimally encodes a scene. A novel framework for cooperative robust estimation is used to estimate descriptions that locally provide the most savings in encoding an image. A modified Hopfield-Tank networks finds the subset of these descriptions which best describes an entire scene, accounting for occlusion and transparent overlap among individual descriptions. Using a part-based 3-D shape model the authors have implemented a system that is able to successfully segment images into their constituent structure.
机译:作者将分段任务制定为搜索一组描述的描述,该描述最小地编码场景。用于协作稳健估计的新颖框架用于估计本地提供在编码图像时节省最多的描述。修改过的Hopfield坦克网络找到了这些描述的子集,该描述最能描述整个场景,占个人描述中的遮挡和透明重叠。使用基于零件的三维形状模型,作者已经实现了一种能够将图像成功分段为其组成结构的系统。

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