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Dual Graph Regularized Dictionary Learning

机译:对偶图正则化字典学习

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摘要

Dictionary learning (DL) techniques aim to find sparse signal representations that capture prominent characteristics in a given data. Such methods operate on a data matrix Y∈RN×M, where each of its columns yi∈RN constitutes a training sample, and these columns together represent a sampling from the data manifold. For signals y∈RN residing on weighted graphs, an additional challenge is incorporating the underlying geometric structure of the data domain into the learning process. In such cases, the topological graph structure may provide a crucial interpretation for the columns, while the data manifold itself may also possess a low-dimensional intrinsic structure that should be taken into account. In this work, we propose a novel dictionary learning algorithm for graph signals that simultaneously takes into account the underlying structure in both the signal and the manifold domains. Specifically, we require that the dictionary atoms are smooth with respect to the graph topology, as encapsulated by the graph Laplacian matrix. Furthermore, we propose to learn this graph Laplacian within the dictionary learning process, adapting it to promote the desired smoothness. Utilizing the manifold structure, we propose to encourage the smoothness of the sparse representations on the data manifold in a similar manner. Both these smoothness forces implicitly enhance the learned dictionary. The efficiency of the proposed approach is demonstrated on synthetic examples as well as on real data, showing that it outperforms other dictionary learning methods in typical problems such as resistance to noise and data completion.
机译:字典学习(DL)技术旨在找到在给定数据中捕获突出特征的稀疏信号表示。这些方法对数据矩阵Y∈RN×M进行操作,其中每个列yi∈RN构成训练样本,这些列一起代表来自数据流形的采样。对于驻留在加权图上的信号y∈RN,另一个挑战是将数据域的底层几何结构纳入学习过程。在这种情况下,拓扑图结构可能为列提供了关键的解释,而数据流形本身也可能具有应考虑在内的低维固有结构。在这项工作中,我们为图形信号提出了一种新颖的字典学习算法,该算法同时考虑了信号域和流形域中的基础结构。具体来说,我们要求字典原子相对于图拓扑(由图拉普拉斯矩阵封装)是平滑的。此外,我们建议在字典学习过程中学习该图拉普拉斯算子,对其进行调整以提高所需的平滑度。利用流形结构,我们建议以类似的方式鼓励数据流形上的稀疏表示的平滑性。这两个平滑力都隐含地增强了学习词典的功能。在合成示例以及真实数据上证明了该方法的效率,表明在典型问题(例如抗噪性和数据完整性)方面,该方法优于其他字典学习方法。

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