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Dissimilarity sparsity-preserving projections in feature extraction for visual recognition

机译:用于视觉识别的特征提取中的稀疏稀疏保留投影

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This paper investigates the use of feature dimensionality reduction approaches for high-dimensional data analysis. Most of the existing preserving projection methods are based on similarity, such as the well-known locality-preserving projections, neighborhood-preserving embedding, and sparsity-preserving projections. Here, we propose a simple yet very efficient preserving projection method based on sparsity and dissimilarity for feature extraction, named dissimilarity sparsity-preserving projections, which is an extended version of sparsity-preserving projections. Both projection coefficients and reconstructive residuals are considered in our proposed framework. We give an idea of a "dissimilarity metric" as the measurement of the relationship among the object data. If the value of the dissimilarity metric of two samples is large, the possibility of them belonging to the same class is small. The proposed methods do not have to preset the number of neighbors and heat kernel width, which is one of the important differences from other projection methods. In practical applications, an approximately direct and complete solution is obtained for the proposed algorithm. Experimental results on three widely used face datasets demonstrate that the proposed framework could achieve competitive performance in terms of accuracy and efficiency.
机译:本文研究了特征降维方法在高维数据分析中的使用。现有的大多数保留投影方法都是基于相似性的,例如众所周知的局部保留投影,邻域保留嵌入和稀疏保留投影。在这里,我们提出了一种基于稀疏度和不相似度的简单但非常有效的保留投影方法,用于特征提取,称为不相似稀疏度保留投影,这是稀疏度保留投影的扩展版本。在我们提出的框架中考虑了投影系数和重建残差。我们给出了“差异度量”的概念,作为对象数据之间关系的度量。如果两个样本的相异性度量值较大,则它们属于同一类别的可能性就很小。所提出的方法不必预设邻居的数目和热核宽度,这是与其他投影方法的重要区别之一。在实际应用中,对于所提出的算法,可以获得近似直接和完整的解决方案。在三个广泛使用的人脸数据集上的实验结果表明,所提出的框架可以在准确性和效率上达到竞争性能。

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