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Beyond union of subspaces: Subspace pursuit on Grassmann manifold for data representation

机译:超越子空间的并集:Grassmann流形上的子空间追求,用于数据表示

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Discovering the underlying structure of a high-dimensional signal or big data has always been a challenging topic, and has become harder to tackle especially when the observations are exposed to arbitrary sparse perturbations. In this paper, built on the model of a union of subspaces (UoS) with sparse outliers and inspired by a basis pursuit strategy, we exploit the fundamental structure of a Grassmann manifold, and propose a new technique of pursuing the subspaces systematically by solving a non-convex optimization problem using the alternating direction method of multipliers. This problem as noted is further complicated by non-convex constraints on the Grassmann manifold, as well as the bilinearity in the penalty caused by the subspace bases and coefficients. Nevertheless, numerical experiments verify that the proposed algorithm, which provides elegant solutions to the sub-problems in each step, is able to de-couple the subspaces and pursue each of them under time-efficient parallel computation.
机译:发现高维信号或大数据的底层结构一直是一个具有挑战性的话题,并且变得越来越难以解决,尤其是当观测值受到任意稀疏扰动的影响时。本文基于具有稀疏离群点的子空间联合模型(UoS),并基于基本追求策略的启发,我们利用了格拉斯曼流形的基本结构,并提出了一种新的技术来解决系统中的子空间问题。使用乘法器交替方向法的非凸优化问题。如前所述,这个问题由于格拉斯曼流形上的非凸约束,以及由子空间基和系数引起的罚分中的双线性而变得更加复杂。尽管如此,数值实验验证了所提出的算法,它为每一步的子问题提供了优雅的解决方案,能够解耦子空间,并在省时的并行计算下追求它们。

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