块标准正交过完全字典学习

Cristian Rusu, B. Dumitrescu
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引用次数: 13

摘要

在稀疏表示领域中,过完备字典学习问题是一个至关重要的问题,其应用范围也在不断扩大。本文提出了一种基于奇异值分解的迭代字典学习算法,该算法能有效地构造标准正交基的并集。本文所描述的对学习过程的运行时间有积极影响的重要创新是计算稀疏表示的方式——数据在单个标准正交基中重建,避免缓慢的稀疏逼近算法——如何单独使用和更新联合中的基,以及如何通过查看最糟糕的重建数据项来扩展联合。数值实验结果表明,在相同目标表示误差的情况下,该方法比以往的方法有明显的加速效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Block orthonormal overcomplete dictionary learning
In the field of sparse representations, the overcomplete dictionary learning problem is of crucial importance and has a growing application pool where it is used. In this paper we present an iterative dictionary learning algorithm based on the singular value decomposition that efficiently construct unions of orthonormal bases. The important innovation described in this paper, that affects positively the running time of the learning procedures, is the way in which the sparse representations are computed - data are reconstructed in a single orthonormal base, avoiding slow sparse approximation algorithms - how the bases in the union are used and updated individually and how the union itself is expanded by looking at the worst reconstructed data items. The numerical experiments show conclusively the speedup induced by our method when compared to previous works, for the same target representation error.
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