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Local occluded face recognition based on 2D-DWT and sparse representation

机译:基于2D-DWT和稀疏表示的本地封闭的面部识别

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Because most of the current face recognition systems do not consider the possible occlusion in the real environment, the traditional face recognition algorithm has poor recognition results. This paper proposes a face recognition method based on sparse representation of two-dimensional discrete wavelet transform in feature subspace for the presence of facial occlusion. Through two-dimensional discrete wavelet decomposition of the training samples, the high-frequency signals are filtered and the low-frequency signals are retained. The low-frequency signals are constructed by PCA, and then the test samples are sparse decomposed on the occlusion dictionary, and finally classified. Compared with other traditional face recognition methods, the proposed algorithm has better recognition results.
机译:由于大多数当前的面部识别系统不考虑真实环境中可能的闭塞,因此传统的人脸识别算法具有较差的识别结果。 本文提出了一种基于特征子空间中的二维离散小波变换的稀疏表示的面部识别方法,用于面部闭合的存在。 通过训练样本的二维离散小波分解,滤波高频信号并保持低频信号。 低频信号由PCA构成,然后在遮挡字典上分解测试样本稀疏,最后分类。 与其他传统的人脸识别方法相比,所提出的算法具有更好的识别结果。

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