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A Multiclass Anisotropic Mumford-Shah Functional for Segmentation of D-dimensional Vectorial Images

机译:一种多牌各向异性Mumford-Shah功能,用于分割D尺寸矢量图像

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We present a general model for multi-class segmentation of multi-channel digital images. It is based on the minimization of an anisotropic version of the Mumford-Shah energy functional in the class of piecewise constant functions. In the framework of geometric measure theory we use the concept of common interphases between regions (classes) and the value of the jump discontinuities of the (weak) solution between adjacent regions in order to define a minimal partition energy functional. The resulting problem is non-smooth and non-convex. Non-smoothness is dealt with highlighting the relationship of the proposed model with the well known Rudin, Osher and Fatemi model for image denoising when piecewise constant solutions (i.e partitions) are considered. Non-convexity is tackled with an optimal threshold of the ROF solution which we which generalize to multi-channel images through a probabilistic clustering. The optimal solution is then computed with a fixed point iteration. The resulting algorithm is described and results are presented showing the successful application of the method to Light Field (LF) images.
机译:我们展示了多渠道数字图像多级分割的一般模型。它基于在分段恒定函数类别中最小化Mumford-Shah能量功能的各向异性版本。在几何测量理论的框架中,我们使用区域(类别)之间的共同界面的概念和相邻区域之间(弱)溶液的跳转不连续的值,以便定义最小的分区能量功能。产生的问题是非平滑和非凸的。在考虑分段恒定的解决方案(即分区)时,突出了众所周知的鲁德汀,OSHER和FATEMI模型的建议模型与众所周知的Rudin,OSHER和FATEMI模型的关系。用ROF解决方案的最佳阈值来解决非凸性,我们通过概率聚类概括到多通道图像。然后使用固定点迭代计算最佳解决方案。描述了所得到的算法,并提出了结果,示出了将方法的成功应用于光场(LF)图像。

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