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Mumford-Shah Regularizer with Spatial Coherence

机译:具有空间相干性的Mumford-Shah正则化器

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摘要

As recently discussed by Bar, Kiryati, and Sochen in [3], the Ambrosio-Tortorelli approximation of the Mumford-Shah functional defines an extended line process regularization where the regularizer has an additional constraint introduced by the term ρ|▽υ|~2. This term mildly forces some spatial organization by demanding that the edges are smooth. However, it does not force spatial coherence such as edge direction compatibility or edge connectivity, as in the traditional edge detectors such as Canny. Using the connection between regularization and diffusion filters, we incorporate further spatial structure into the regularization process of the Mumford-Shah model. The new model combines smoothing, edge detection and edge linking steps of the traditional approach to boundary detection. Importance of spatial coherence is best observed if the image noise is salt and pepper like. Proposed approach is able to deal with difficult noise cases without using non-smooth cost functions such as L~1 in the data fidelity or regularizer.
机译:正如Bar,Kiryati和Sochen在[3]中最近讨论的那样,Mumford-Shah泛函的Ambrosio-Tortorelli逼近定义了一个扩展线过程正则化,其中正则化项由项ρ|▽υ|〜2引入了附加约束。 。该术语通过要求边缘平滑来温和地强制某种空间组织。但是,它不会像传统的边缘检测器(如Canny)那样强制进行空间相干性,例如边缘方向兼容性或边缘连接性。利用正则化和扩散滤波器之间的联系,我们将进一步的空间结构纳入Mumford-Shah模型的正则化过程。新模型结合了传统边界检测方法的平滑,边缘检测和边缘链接步骤。如果图像噪声像盐和胡椒粉一样,则最好观察到空间相干性的重要性。所提出的方法能够处理困难的噪声情况,而无需在数据保真度或正则化器中使用诸如L〜1之类的非平滑代价函数。

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