首页> 外文会议>ICMLA 2012;International Conference on Machine Learning and Applications >Occluded Face Recognition Using Correntropy-Based Nonnegative Matrix Factorization
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Occluded Face Recognition Using Correntropy-Based Nonnegative Matrix Factorization

机译:基于基于熵的非负矩阵分解的遮挡人脸识别

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Occluded face recognition is one the most interesting problems of applied computer vision. Among many face recognition approaches, the Nonnegative Matrix Factorization (NMF) turns out to be one of the popular techniques especially for part-based learning. It aims to factorize a nonnegative data matrix into two nonnegative matrices and obtains a well approximated product using an objective function. In this paper we propose to maximize the correntropy similarity measure as an objective function for NMF. Correntropy has been recently defined as a nonlinear similarity measure using an entropy-based criterion. After the minimization process of the correntropy function, we use it to recognize occluded face data set and compare its recognition performance with the standard NMF and Principal Component Analysis (PCA). The experimental results are illustrated with ORL face data set. The results show that our correntropy-based NMF (NMF-Corr) has better recognition rate compared with PCA and NMF.
机译:遮挡人脸识别是应用计算机视觉中最有趣的问题之一。在许多人脸识别方法中,非负矩阵分解(NMF)成为流行的技术之一,尤其是针对基于零件的学习。它旨在将非负数据矩阵分解为两个非负矩阵,并使用目标函数获得近似的乘积。在本文中,我们建议最大化熵相似性度量作为NMF的目标函数。最近,使用基于熵的标准将肾上腺皮质激素定义为一种非线性相似性度量。在最小化了熵函数之后,我们使用它来识别被遮挡的人脸数据集,并将其识别性能与标准NMF和主成分分析(PCA)进行比较。实验结果用ORL人脸数据集说明。结果表明,与PCA和NMF相比,我们的基于熵的NMF(NMF-Corr)具有更好的识别率。

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