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Genetic Algorithm Optimized Structured Dictionary for Discriminative Block Sparse Representation

机译:遗传算法优化的鉴别块稀疏表示的结构化词典

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This paper presents a few innovations towards learning a discriminative block-structured dictionary. The learning process of such a dictionary is broadly divided into two steps: block formation and dictionary update. In the existing works on block structure estimation, it is assumed that the maximum block size is known a priori. In real-world problems, such an assumption may be sub-optimal. For addressing that, a genetic algorithm optimized K-means clustering based block formation approach is proposed in this work. We also propose a novel dictionary learning approach that incorporates three attributes, namely, reconstruction and discriminative fidelities, block-wise incoherence, and l(2,1)-norm regularization. To further enhance the discriminative ability of the sparse codes, the class-specific and class-common information are modeled separately in the dictionary. The l(2,1)-norm regularization enhances the consistency among sparse codes belonging to the same-class data. In the proposed approach, the dictionary is updated block-wise by employing the singular value decomposition of the composite error matrix obtained through the weighted combination of the component errors. The proposed innovations are evaluated on several public image databases for super-resolution and classification tasks. Along with those image databases, speech based speaker verification task is also evaluated the proposed approach in a few different domains to validate the generalizability. The experimental results obtained on these different databases demonstrate the effectiveness of the proposed approaches when compared with the respective state-of-the-art.
机译:本文介绍了学习鉴别的块结构型词典的一些创新。这种词典的学习过程大致分为两个步骤:块形成和字典更新。在现有的块结构估计上的工作中,假设最大块大小是已知先验的。在现实世界问题中,这种假设可能是次优。为了解决这一工作,提出了一种基于遗传算法优化的K-Means聚类基于块形成方法。我们还提出了一种新的词典学习方法,包括三个属性,即重建和歧视保真度,块明智的不连结和L(2,1) - 诺正则化。为了进一步提高稀疏代码的辨别能力,类特定的和类常见信息在字典中单独建模。 L(2,1)-norm正则化增强了属于同一类数据的稀疏代码之间的一致性。在所提出的方法中,通过采用通过分量误差的加权组合获得的复合误差矩阵的奇异值分解来更新块之明的字典。拟议的创新在几个公共图像数据库中评估了超级分辨率和分类任务。除了那些图像数据库之外,还在若干不同域中评估基于语音的扬声器验证任务,以验证概括性。在这些不同的数据库中获得的实验结果表明,与各自的最新数据相比,所提出的方法的有效性。

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