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Sparse and Low-Rank Coupling Image Segmentation Model Via Nonconvex Regularization

机译:非凸正则化的稀疏低秩耦合图像分割模型

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摘要

This paper investigates how to boost region-based image segmentation by inheriting the advantages of sparse representation and low-rank representation. A novel image segmentation model, called nonconvex regularization based sparse and low-rank coupling model, is presented for such a purpose. We aim at finding the optimal solution which is provided with sparse and low-rank simultaneously. This is achieved by relaxing sparse representation problem as L_(1/2) norm minimization other than the L_1 norm minimization, while relaxing low-rank representation problem as the S_(1/2) norm minimization other than the nuclear norm minimization. This coupled model can be solved efficiently through the Augmented Lagrange Multiplier (ALM) method and half-threshold operator. Compared to the other state-of-the-art methods, the new method is better at capturing the global structure of the whole data, the robustness is better and the segmentation accuracy is also competitive. Experiments on two public image segmentation databases well validate the superiority of our method.
机译:本文研究如何通过继承稀疏表示和低秩表示的优势来增强基于区域的图像分割。为此目的,提出了一种新颖的图像分割模型,称为基于非凸正则化的稀疏和低秩耦合模型。我们旨在找到同时提供稀疏和低等级的最佳解决方案。这是通过将除了L_1范数最小化之外的L_(1/2)范数最小化的稀疏表示问题,而不是将核范数最小化作为S_(1/2)范数最小化的低秩表示问题而实现的。该耦合模型可以通过增强拉格朗日乘数(ALM)方法和半阈值运算符来有效求解。与其他最新方法相比,该新方法在捕获整个数据的全局结构方面更胜一筹,其鲁棒性更好,并且分割精度也具有竞争力。在两个公共图像分割数据库上进行的实验很好地证明了我们方法的优越性。

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