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Progressive sparse representation-based classification using local discrete cosine transform evaluation for image recognition

机译:基于局部离散余弦变换评估的基于图像的渐进稀疏表示分类

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摘要

This paper proposes a progressive sparse representation-based classification algorithm using local discrete cosine transform (DCT) evaluation to perform face recognition. Specifically, the sum of the contributions of all training samples of each subject is first taken as the contribution of this subject, then the redundant subject with the smallest contribution to the test sample is iteratively eliminated. Second, the progressive method aims at representing the test sample as a linear combination of all the remaining training samples, by which the representation capability of each training sample is exploited to determine the optimal “nearest neighbors” for the test sample. Third, the transformed DCT evaluation is constructed to measure the similarity between the test sample and each local training sample using cosine distance metrics in the DCT domain. The final goal of the proposed method is to determine an optimal weighted sum of nearest neighbors that are obtained under the local correlative degree evaluation, which is approximately equal to the test sample, and we can use this weighted linear combination to perform robust classification. Experimental results conducted on the ORL database of faces (created by the Olivetti Research Laboratory in Cambridge), the FERET face database (managed by the Defense Advanced Research Projects Agency and the National Institute of Standards and Technology), AR face database (created by Aleix Martinez and Robert Benavente in the Computer Vision Center at U.A.B), and USPS handwritten digit database (gathered at the Center of Excellence in Document Analysis and Recognition at SUNY Buffalo) demonstrate the effectiveness of the proposed method.
机译:本文提出了一种基于局部稀疏表示的渐进稀疏分类算法,该算法利用局部离散余弦变换(DCT)评估进行人脸识别。具体地,首先将每个受试者的所有训练样本的贡献之和作为该受试者的贡献,然后迭代地消除对测试样本的贡献最小的冗余受试者。其次,渐进方法旨在将测试样本表示为所有其余训练样本的线性组合,从而利用每个训练样本的表示能力来确定测试样本的最佳“最近邻居”。第三,构造转换后的DCT评估,以使用DCT域中的余弦距离度量来测量测试样本与每个本地训练样本之间的相似性。所提出方法的最终目标是确定在局部相关度评估下获得的最接近邻居的最佳加权总和,该加权总和大约等于测试样本,并且我们可以使用此加权线性组合执行鲁棒分类。在ORL人脸数据库(由剑桥的Olivetti研究实验室创建),FERET人脸数据库(由国防高级研究计划局和美国国家标准与技术研究院管理),AR人脸数据库(由Aleix创建)上进行的实验结果UAB的计算机视觉中心的Martinez和Robert Benavente)以及USPS手写数字数据库(在SUNY Buffalo的文档分析和识别卓越中心收集)证明了该方法的有效性。

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