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Multi-channel multi-model feature learning for face recognition

机译:用于人脸识别的多通道多模型特征学习

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Different modalities have been proved to carry various information. This paper aims to study how the multiple face regions/channels and multiple models (e.g., hand-crafted and unsupervised learning methods) answer to the face recognition problem. Hand crafted and deep feature learning techniques have been proposed and applied to estimate discriminative features in object recognition problems. In our Multi-Channel Multi-Model feature learning (McMmFL) system, we propose a new autoencoder (AE) optimization that integrates the alternating direction method of multipliers (ADMM). One of the advantages of our AE is dividing the energy formulation into several sub-units that can be used to paralyze/distribute the optimization tasks. Furthermore, the proposed method uses the advantage of K-means clustering and histogram of gradients (HOG) to boost the recognition rates. McMmFL outperforms the best results reported on the literature on three benchmark facial data sets that include AR, Yale, and PubFig83 with 95.04%, 98.97%, 95.85% rates, respectively. (C) 2016 Published by Elsevier B.V.
机译:事实证明,不同的方式可以携带各种信息。本文旨在研究多种面部区域/通道和多种模型(例如手工制作和无监督学习方法)如何解决面部识别问题。已经提出了手工制作的深度特征学习技术,并将其应用于估计物体识别问题中的鉴别特征。在我们的多通道多模型特征学习(McMmFL)系统中,我们提出了一种新的自动编码器(AE)优化,该优化器集成了乘法器交替方向方法(ADMM)。我们的AE的优点之一是将能量公式划分为几个子单元,这些子单元可用于使优化任务瘫痪/分布。此外,该方法利用了K-means聚类和梯度直方图(HOG)的优势来提高识别率。 McMmFL在三个基准面部数据集(包括AR,Yale和PubFig83)上的表现优于文献报道的最佳结果,分别达到95.04%,98.97%和95.85%。 (C)2016由Elsevier B.V.发布

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