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Shape Interaction Matrix Revisited and Robustified: Efficient Subspace Clustering with Corrupted and Incomplete Data

机译:再谈和加强形状交互矩阵:具有损坏和不完整数据的有效子空间聚类

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The Shape Interaction Matrix (SIM) is one of the earliest approaches to performing subspace clustering (i.e., separating points drawn from a union of subspaces). In this paper, we revisit the SIM and reveal its connections to several recent subspace clustering methods. Our analysis lets us derive a simple, yet effective algorithm to robustify the SIM and make it applicable to realistic scenarios where the data is corrupted by noise. We justify our method by intuitive examples and the matrix perturbation theory. We then show how this approach can be extended to handle missing data, thus yielding an efficient and general subspace clustering algorithm. We demonstrate the benefits of our approach over state-of-the-art subspace clustering methods on several challenging motion segmentation and face clustering problems, where the data includes corruptions and missing measurements.
机译:形状交互矩阵(SIM)是执行子空间聚类(即,从子空间的并集中分离出的点)的最早方法之一。在本文中,我们将重新审视SIM,并揭示其与几种最新的子空间聚类方法的联系。通过我们的分析,我们可以得出一种简单而有效的算法来增强SIM的性能,使其适用于数据被噪声破坏的现实情况。我们通过直观的例子和矩阵摄动理论来证明我们的方法是正确的。然后,我们展示如何将该方法扩展为处理丢失的数据,从而产生一种有效且通用的子空间聚类算法。我们在一些具有挑战性的运动分割和人脸聚类问题上展示了我们的方法相对于最新的子空间聚类方法的优势,这些问题中的数据包括损坏和丢失的测量值。

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