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Orthogonal Procrustes Analysis for Dictionary Learning in Sparse Linear Representation

机译:稀疏线性表示中字典学习的正交前兆分析

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摘要

In the sparse representation model, the design of overcomplete dictionaries plays a key role for the effectiveness and applicability in different domains. Recent research has produced several dictionary learning approaches, being proven that dictionaries learnt by data examples significantly outperform structured ones, e.g. wavelet transforms. In this context, learning consists in adapting the dictionary atoms to a set of training signals in order to promote a sparse representation that minimizes the reconstruction error. Finding the best fitting dictionary remains a very difficult task, leaving the question still open. A well-established heuristic method for tackling this problem is an iterative alternating scheme, adopted for instance in the well-known K-SVD algorithm. Essentially, it consists in repeating two stages; the former promotes sparse coding of the training set and the latter adapts the dictionary to reduce the error. In this paper we present R-SVD, a new method that, while maintaining the alternating scheme, adopts the Orthogonal Procrustes analysis to update the dictionary atoms suitably arranged into groups. Comparative experiments on synthetic data prove the effectiveness of R-SVD with respect to well known dictionary learning algorithms such as K-SVD, ILS-DLA and the online method OSDL. Moreover, experiments on natural data such as ECG compression, EEG sparse representation, and image modeling confirm R-SVD’s robustness and wide applicability.
机译:在稀疏表示模型中,过度完成词典的设计对于不同领域的有效性和适用性起着关键作用。最近的研究产生了几种字典学习方法,事实证明,通过数据示例学习的字典明显优于结构化字典,例如字典。小波变换。在这种情况下,学习在于使字典原子适应一组训练信号,以促进使重构误差最小的稀疏表示。寻找最合适的字典仍然是一项非常艰巨的任务,这个问题仍然悬而未决。解决该问题的一种完善的启发式方法是迭代交替方案,例如在众所周知的K-SVD算法中采用。从本质上讲,它包括重复两个阶段。前者促进了训练集的稀疏编码,而后者则改进了字典以减少错误。在本文中,我们提出了一种新的方法R-SVD,它在保持交替方案的同时,采用正交Procrustes分析来更新适当排列成组的字典原子。合成数据的比较实验证明,相对于众所周知的字典学习算法(例如K-SVD,ILS-DLA和在线方法OSDL),R-SVD的有效性。此外,对自然数据(例如ECG压缩,EEG稀疏表示和图像建模)的实验证实了R-SVD的鲁棒性和广泛的适用性。

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