基于L1/2正则化的低秩图像分割模型

Xiujun Zhang, Chen Xu
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引用次数: 2

摘要

在谱型子空间分割模型中,将秩最小化问题简化为核范数最小化(NNM)问题。然而,为了保证NNM的成功,需要一些严格的条件,NNM可能会得到比真实矩阵高得多的秩。本文将L1/2正则化引入到低秩谱型子空间分割模型中,结合增广拉格朗日乘子(ALM)方法和半阈值算子,给出了求解该模型的离散算法。第四节的大量实验证明了我们的模型在数据聚类和图像分割方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
L1/2 Regularization Based Low-Rank Image Segmentation Model
In the spectral-type subspace segmentation models, the rank minimization problem was relaxed as Nuclear Norm Minimization(NNM) problem. However, to guarantee the success of NNM, one needs some strict conditions, and NNM may yield the matrix with much higher rank than the real one. In this paper, the L1/2 regularization is introduced into the low-rank spectral-type subspace segmentation model, combining Augmented Lagrange Multiplier(ALM) method and half-threshold operator, a discrete algorithm to solve the proposed model is given. A large number of experiments in section IV demonstrate the effectiveness of our model in data clustering and image segmentation.
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