流形上L1范数的一致离散化与最小化

A. Bronstein, Yoni Choukroun, R. Kimmel, Matan Sela
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引用次数: 14

摘要

在过去的二十年中,L1范数由于其促进稀疏性的特性而在信号和图像处理中非常流行。最近,它的推广到非欧几里得域已发现有用的形状分析应用。例如,结合Dirichlet能量的最小化,它被证明可以产生紧支撑的准调和正交基,称为压缩流形模态[14]。流形上的连续L1范数通常被应用于采样函数的向量L1范数所取代。我们表明,这种方法是不正确的,因为它不能一致地离散连续范数,并警告其对特定采样的敏感性。我们提出了两种可选的离散化方法,从而得到迭代加权的l2范数。我们在压缩模态问题上演示了所提出的策略,该策略将压缩模态问题简化为一系列简单的特征分解问题,不需要在Stiefel流形上进行非凸优化,并且产生更稳定和准确的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Consistent Discretization and Minimization of the L1 Norm on Manifolds
The L1 norm has been tremendously popular in signal and image processing in the past two decades due to its sparsity-promoting properties. More recently, its generalization to non-Euclidean domains has been found useful in shape analysis applications. For example, in conjunction with the minimization of the Dirichlet energy, it was shown to produce a compactly supported quasi-harmonic orthonormal basis, dubbed as compressed manifold modes [14]. The continuous L1 norm on the manifold is often replaced by the vector ℓ1 norm applied to sampled functions. We show that such an approach is incorrect in the sense that it does not consistently discretize the continuous norm and warn against its sensitivity to the specific sampling. We propose two alternative discretizations resulting in an iteratively-reweighed ℓ2 norm. We demonstrate the proposed strategy on the compressed modes problem, which reduces to a sequence of simple eigendecomposition problems not requiring non-convex optimization on Stiefel manifolds and producing more stable and accurate results.
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