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Structured supervised dictionary learning based on class-specific and shared sub-dictionaries

机译:基于特定班级和共享子词典的结构化有监督词典学习

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In recent years, sparse representation and dictionary learning has been widely used in signal processing tasks, especially for classification aim. For the aim of high accuracy classification, sparse coefficients obtained based on learned dictionary should have high discrimination power, which common sparse representation techniques cannot well satisfy that because most techniques ignore the underlying structural information of the data. Instead, structured sparsity coding techniques capture the structural information of data and improve the classification accuracy accordingly. On the other hand, one should notice that data samples of different classes might share some similarities which can decrease the discrimination ability and the classification accuracy. This implies to use a shared dictionary among all classes to capture the similarities while class-specific sub-dictionaries describe the intra-class features properly. In this paper, inspired by DL-COPAR method, a structured sparse coding technique is proposed that learns discriminative class-specific sub-dictionaries and a shared dictionary which its atoms are shared among all classes and have no discrimination capability. Also, the proposed method is based on l2,1 norm to use the structure of the data too. The optimization function of the proposed method is solved by an efficient alternating iterative scheme. The proposed method is evaluated by conducting experiments on four datasets and the experimental results demonstrate the effectiveness of the proposed method.
机译:近年来,稀疏表示和字典学习已广泛用于信号处理任务,尤其是用于分类目的。出于高精度分类的目的,基于学习词典获得的稀疏系数应具有较高的鉴别能力,由于大多数技术都忽略了数据的基础结构信息,因此常见的稀疏表示技术无法很好地满足这一要求。取而代之的是,结构化稀疏编码技术捕获数据的结构信息,并相应地提高分类精度。另一方面,应该注意的是,不同类别的数据样本可能具有一些相似之处,这可能会降低判别能力和分类准确性。这意味着在所有类别之间使用共享字典来捕获相似性,而特定于类别的子词典正确地描述了类别内特征。本文在DL-COPAR方法的启发下,提出了一种结构化的稀疏编码技术,该方法学习判别类特定的子词典和一个共享的词典,该词典的原子在所有类中都是共享的并且没有区分能力。此外,该方法也基于l 2 1 范数来使用数据结构。通过一种有效的交替迭代方案解决了该方法的优化功能。通过对四个数据集进行实验对所提出的方法进行了评估,实验结果证明了所提出方法的有效性。

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