Sparse Representations, Compressive Sensing and dictionaries for pattern recognition

Vishal M. Patel, R. Chellappa
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引用次数: 79

Abstract

In recent years, the theories of Compressive Sensing (CS), Sparse Representation (SR) and Dictionary Learning (DL) have emerged as powerful tools for efficiently processing data in non-traditional ways. An area of promise for these theories is object recognition. In this paper, we review the role of SR, CS and DL for object recognition. Algorithms to perform object recognition using these theories are reviewed. An important aspect in object recognition is feature extraction. Recent works in SR and CS have shown that if sparsity in the recognition problem is properly harnessed then the choice of features is less critical. What becomes critical, however, is the number of features and the sparsity of representation. This issue is discussed in detail.
稀疏表示、压缩感知和模式识别字典
近年来,压缩感知(CS)、稀疏表示(SR)和字典学习(DL)等理论已成为以非传统方式高效处理数据的强大工具。这些理论的一个有希望的领域是物体识别。本文综述了SR、CS和DL在物体识别中的作用。算法执行对象识别使用这些理论进行了审查。特征提取是目标识别的一个重要方面。最近在SR和CS方面的工作表明,如果识别问题中的稀疏性得到适当利用,那么特征的选择就不那么重要了。然而,至关重要的是特征的数量和表示的稀疏性。对这个问题进行了详细的讨论。
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