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A Projection Free Method for Generalized Eigenvalue Problem with a Nonsmooth Regularizer

机译:具有非光滑正则化器的广义特征值问题的无投影方法

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Eigenvalue problems are ubiquitous in computer vision, covering a very broad spectrum of applications ranging from estimation problems in multi-view geometry to image segmentation. Few other linear algebra problems have a more mature set of numerical routines available and many computer vision libraries leverage such tools extensively. However, the ability to call the underlying solver only as a "black box" can often become restrictive. Many 'human in the loop' settings in vision frequently exploit supervision from an expert, to the extent that the user can be considered a subroutine in the overall system. In other cases, there is additional domain knowledge, side or even partial information that one may want to incorporate within the formulation. In general, regularizing a (generalized) eigenvalue problem with such side information remains difficult. Motivated by these needs, this paper presents an optimization scheme to solve generalized eigenvalue problems (GEP) involving a (nonsmooth) regularizer. We start from an alternative formulation of GEP where the feasibility set of the model involves the Stiefel manifold. The core of this paper presents an end to end stochastic optimization scheme for the resultant problem. We show how this general algorithm enables improved statistical analysis of brain imaging data where the regularizer is derived from other 'views' of the disease pathology, involving clinical measurements and other image-derived representations.
机译:特征值问题在计算机视觉中无处不在,涵盖了从多视图几何中的估计问题到图像分割的广泛应用。很少有其他线性代数问题具有更成熟的数字例程集,并且许多计算机视觉库都广泛使用此类工具。但是,仅将基础求解器称为“黑匣子”的能力通常会受到限制。在视觉上,许多“人在循环中”的设置经常会利用专家的监督,以至于可以将用户视为整个系统中的子例程。在其他情况下,可能需要将其他领域知识,辅助甚至部分信息纳入配方中。通常,用这样的辅助信息来规范化(广义)特征值问题仍然很困难。基于这些需求,本文提出了一种优化方案,以解决涉及(非光滑)正则化器的广义特征值问题(GEP)。我们从GEP的替代公式开始,该模型的可行性集涉及Stiefel流形。本文的核心提出了一种针对由此产生的问题的端到端随机优化方案。我们展示了这种通用算法如何改善大脑成像数据的统计分析,其中正则化器是从疾病病理学的其他“观点”中得出的,涉及临床测量和其他图像来源的表示。

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