基于扩展泛型集稀疏表示的单样本人脸识别

L. Qi, Tie Yun, Chengwu Liang, Zizhe Wang
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引用次数: 2

摘要

单个样本/人(SSPP)人脸识别是人脸识别的核心问题之一。此外,测试样品通常会受到诸如表情、照明和眼镜等令人讨厌的变量的破坏。为了解决这一问题,已经提出了许多方法来克服方差对复杂环境中测试样品的不利影响,但它们都不是鲁棒的。为此,我们提出了基于扩展泛型集稀疏表示的单样本人脸识别方法。首先,引入一组通用样本集,提取通用人脸样本集的变异信息并将其扩展到单个训练样本集;然后,利用稀疏表示模型对训练样本集生成测试样本的重构误差。最后,利用稀疏重建误差实现图像识别。在AR数据库、Extended Yale B数据库、CAS-PEAL数据库和LFW数据库上的实验结果表明,该算法对SSPP人脸识别的变异特征具有较强的鲁棒性,优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Single Sample Per Person Face Recognition Based on Sparse Representation with Extended Generic Set
The single sample per person(SSPP) face recognition is one of the most essential problems of face recognition. Moreover, the testing samples are typically corrupted by nuisance variables such as expression, illumination and glasses. To address this problem, plenty of methods have been proposed to surmount the adverse effect of variances to testing samples in complex surroundings, but they are not robust. Therefor we proposed the Single sample per person face recognition based on sparse representation with extended generic set (SRGES). First, a set of general sample set were introduced, and the variation information of generic face samples set was extracted and extended to the single training sample set. Then, reconstruction error of testing sample is generated on training samples set by sparse representation model. Finally, the recognition is achieved depending on this sparse reconstruction error. The experimental results on the AR database, Extended Yale B database, CAS-PEAL database and LFW database displayed that the proposed algorithm is robust to variation feature for SSPP face recognition, and outperforms the state-of-art methods.
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