基于人脸局部特征的人脸识别我要分享

Face recognition based on local features

矩阵降维 局部特征分解 recognition-faces 降维 face-features-matlab

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代码分类: 图像处理

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代码描述

中文说明:

NMFs算法(带稀疏度约束的非负稀疏矩阵分解)用于实现基于人脸局部特征的人脸识别,通过近似的矩阵分解进行空间降维。


English Description:

NMFS algorithm (non negative sparse matrix factorization with sparsity constraint) is used to realize face recognition based on local features of face, and the spatial dimension is reduced by approximate matrix factorization


代码预览

nmfpack

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