人脸识别的层次正交匹配追踪

Huaping Liu, F. Sun
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引用次数: 6

摘要

本文试图利用多特征稀疏表示来开发人脸识别问题中的联合群特征。我们声称,一个测试人脸图像的不同特征向量在较高的组水平上共享相同的稀疏模式,但不一定在较低的(组内)水平上共享相同的稀疏模式。这意味着它们共享相同的活动组,但不一定是相同的活动集。为此,提出了一种分层正交匹配追踪算法。这种方法的基本思想很简单:在每个迭代步骤中,我们首先选择由不同特征共享的最佳组,然后为每个特征选择(在该组内的)最佳原子。该算法在标准人脸识别数据集上显示出良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hierarchical orthogonal matching pursuit for face recognition
This paper tries to exploit the joint group intrinsics in face recognition problem by using sparse representation with multiple features. We claim that different feature vectors of one test face image share the same sparsity pattern at the higher group level, but not necessarily at the lower (inside the group) level. This means that they share the same active groups, but not necessarily the same active set. To this end, a hierarchical orthogonal matching pursuit algorithm is developed. The basic idea of this approach is straightforward: At each iteration step, we first select the best group which is shared by different features, then we select the best atoms (within this group) for each feature. This algorithm is very efficient and shows good performance in standard face recognition dataset.
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