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A Geometrical Study of Matching Pursuit Parametrization

机译:匹配追踪参数化的几何研究

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摘要

This paper studies the effect of discretizing the parametrization of a dictionary used for matching pursuit (MP) decompositions of signals. Our approach relies on viewing the continuously parametrized dictionary as an embedded manifold in the signal space on which the tools of differential (Riemannian) geometry can be applied. The main contribution of this paper is twofold. First, we prove that if a discrete dictionary reaches a minimal density criterion, then the corresponding discrete MP (dMP) is equivalent in terms of convergence to a weakened hypothetical continuous MP. Interestingly, the corresponding weakness factor depends on a density measure of the discrete dictionary. Second, we show that the insertion of a simple geometric gradient ascent optimization on the atom dMP selection maintains the previous comparison but with a weakness factor at least two times closer to unity than without optimization. Finally, we present numerical experiments confirming our theoretical predictions for decomposition of signals and images on regular discretizations of dictionary parametrizations.
机译:本文研究了离散化用于信号的匹配追踪(MP)分解的字典的参数化的效果。我们的方法依赖于将连续参数化的字典视为信号空间中的嵌入式流形,可以在其上应用微分(黎曼)几何工具。本文的主要贡献是双重的。首先,我们证明如果离散字典达到最小密度标准,则相应的离散MP(dMP)在收敛性上等同于弱化的假设连续MP。有趣的是,相应的弱点因子取决于离散字典的密度度量。其次,我们证明在原子dMP选择上插入简单的几何梯度上升优化可保持先前的比较,但其弱点至少比没有优化时更接近统一两倍。最后,我们提出了数值实验,证实了在字典参数化规则离散化过程中信号和图像分解的理论预测。

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