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A Gaussian-Based Rank Approximation for Subspace Clustering

机译:基于高斯的子空间聚类秩近似

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Low-rank representation (LRR) has been shown successful in seeking low-rank structures of data relationships in a union of subspaces. Generally, LRR and LRR-based variants need to solve the nuclear norm-based minimization problems. Beyond the success of such methods, it has been widely noted that the nuclear norm may not be a good rank approximation because it simply adds all singular values of a matrix together and thus large singular values may dominant the weight. This results in far from satisfactory rank approximation and may degrade the performance of low-rank models based on the nuclear norm. In this paper, we propose a novel nonconvex rank approximation based on the Gaussian distribution function, which has demanding properties to be a better rank approximation than the nuclear norm. Then a low-rank model is proposed based on the new rank approximation with application to motion segmentation. Experimental results have shown significant improvements and verified the effectiveness of our method.
机译:已显示低秩表示(LRR)成功地在子空间联合中寻求数据关系的低秩结构。通常,基于LRR和基于LRR的变体需要解决基于核规范的最小化问题。除了这些方法的成功之外,已经广泛指出的是,核范数可能不是一个很好的秩近似,因为它只是将矩阵的所有奇异值加在一起,因此大的奇异值可能会占主导地位。这导致远不能令人满意的秩近似,并且可能会降低基于核规范的低秩模型的性能。在本文中,我们提出了一种基于高斯分布函数的新颖的非凸秩逼近,它具有比核范数更好的秩逼近的要求。然后基于新的秩近似提出了一种低秩模型,并将其应用于运动分割。实验结果显示出显着的改进,并验证了我们方法的有效性。

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