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Classification based on weighted sparse representation using smoothed L0 norm with non-negative coefficients

机译:基于具有非负系数的平滑L 0 范数的基于加权稀疏表示的分类

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We present a novel classification technique based on sparse representation. The main idea of sparse representation for classification is the assumption that the training samples, or atoms, for a particular class form a linear basis for any new test sample that belongs to that class. Currently, most of the methods for sparse representation classification do not apply constraints to the coefficients that form the linear combination of the atoms, which leads to coefficients that can be positive or negative. In addition, all the training samples in the dictionary are treated equally. In this paper, we impose non-negative constraint on the components of the coefficient vector to ensure that the coefficient vector represents the contributions of the training samples towards the query, which is more natural for classification purposes. We also use the mutual information between the query sample and each of the training samples to obtain a weight for each of the atoms in the dictionary. These weights have the effect of reducing the search space and speeding the convergence of the algorithm in finding the coefficient vector. Experiments conducted on the Extended Yale B database for face recognition and on the University of Notre Dame (UND) database for ear recognition show that the proposed non-negative weighted sparse representation obtained by smoothed l norm outperforms other state-of-the-art classifiers.
机译:我们提出了一种基于稀疏表示的新颖分类技术。稀疏表示分类的主要思想是假设特定类别的训练样本或原子构成属于该类别的任何新测试样本的线性基础。当前,大多数用于稀疏表示分类的方法都没有对形成原子线性组合的系数施加约束,从而导致系数可以为正或负。此外,字典中的所有训练样本均得到同等对待。在本文中,我们对系数向量的分量施加了非负约束,以确保系数向量代表训练样本对查询的贡献,这对于分类而言更为自然。我们还使用查询样本和每个训练样本之间的相互信息来获取字典中每个原子的权重。这些权重具有减少搜索空间并加快算法在寻找系数向量中的收敛性的作用。在用于人脸识别的扩展Yale B数据库和用于耳朵识别的Notre Dame大学(UND)数据库上进行的实验表明,通过平滑l范数获得的拟议非负加权稀疏表示优于其他最新分类器。

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