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A novel sparse representation method based on virtual samples for face recognition

机译:一种基于虚拟样本的稀疏表示方法

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摘要

Though sparse representation (Wagner et al. in IEEE Trans Pattern Anal Mach Intell 34(2):372-386, 2012, CVPR 597-604, 2009) can perform very well in face recognition (FR), it still can be improved. To improve the performance of FR, a novel sparse representation method based on virtual samples is proposed in this paper. The proposed method first extends the training samples to form a new training set by adding random noise to them and then performs FR. As the testing samples can be represented better with the new training set, the ultimate classification obtained using the proposed method is more accurate than the classification based on the original training samples. A number of FR experiments show that the classification accuracy obtained using our method is usually 2-5% greater than that obtained using the method mentioned in Xu and Zhu (Neural Comput Appl, 2012).
机译:尽管稀疏表示(Wagner等人在IEEE Trans Pattern Anal Mach Intell 34(2):372-386,2012,CVPR 597-604,2009中)可以在人脸识别(FR)中表现很好,但仍然可以改善。为了提高帧中继的性能,提出了一种基于虚拟样本的稀疏表示方法。所提出的方法首先通过向训练样本添加随机噪声来扩展训练样本以形成新的训练集,然后执行FR。由于使用新的训练集可以更好地表示测试样本,因此,与基于原始训练样本的分类相比,使用建议的方法获得的最终分类更为准确。大量FR实验表明,使用我们的方法获得的分类精度通常比使用Xu和Zhu(Neural Comput Appl,2012)中提到的方法获得的分类精度高2-5%。

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