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Two rank approximations for low-rank based subspace clustering

机译:低级基于子空间聚类的两个等级近似

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Rank approximation and minimization problem is widely applied in machine learning and computer vision. As the minimum convex envelope of the rank function, the nuclear norm is often used for rank approximation and has achieved satisfactory results in different tasks. However, the nuclear norm may not be an appropriate rank approximation especially when there are large singular values. In this paper, we propose two different functions to more accurately approximate the rank function. Then based on the low-rank representation model, we use these approximations for robust subspace clustering with desirable low rank and robustness to noise. Experimental results show the effectiveness of our proposed methods.
机译:等级近似和最小化问题广泛应用于机器学习和计算机视觉。作为等级函数的最小凸包络,核规范通常用于等级近似,并且在不同的任务中取得了令人满意的结果。然而,核规范可能不是适当的秩近似,特别是当有大量的奇异值时。在本文中,我们提出了两个不同的功能来更准确地近似秩函数。然后基于低秩表示模型,我们使用这些近似值对于具有所需的低等级和噪声的理想低级和鲁棒性的鲁棒子空间聚类。实验结果表明了我们提出的方法的有效性。

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