Improved face recognition based on the fusion of PCA feature extraction and sparse representation

Jie Gao, Liquan Zhang
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Abstract

Sparse representation is a hot research topic in the field of biometrics in recent years. Even though the image has different expression and illumination, as well as occlusion, most of the algorithms still have good recognition effect. However, when the image contains illumination and facial expression changes, sparse classification method does not have good robustness. In this paper, we present a method that combination the PCA feature extraction method and sparse representation, which is a simple and effective face recognition algorithm. Based on the sparse concentration index, we propose the index threshold. When the concentration index is lower than the threshold value, we need to choose five training samples which corresponding to the minimum residuals, then construct a new training sample dictionary, and use the reconstructed dictionary to classify the test samples. This method strengthening the verification of abnormal test samples and optimizes the classification strategy. Comparing with the traditional SRC method, the simulation results show that the improved method is better than the SRC classification.
基于PCA特征提取与稀疏表示融合的改进人脸识别
稀疏表示是近年来生物识别领域的一个研究热点。尽管图像具有不同的表情、光照和遮挡,但大多数算法仍然具有良好的识别效果。然而,当图像包含光照和面部表情变化时,稀疏分类方法的鲁棒性不佳。本文提出了一种将PCA特征提取方法与稀疏表示相结合的人脸识别方法,是一种简单有效的人脸识别算法。在稀疏浓度指标的基础上,提出了指标阈值。当浓度指数低于阈值时,我们需要选择5个残差最小值对应的训练样本,然后构造一个新的训练样本字典,使用重建的字典对测试样本进行分类。该方法加强了对异常测试样本的验证,优化了分类策略。仿真结果表明,与传统的SRC分类方法相比,改进后的方法优于SRC分类方法。
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