用于人脸识别的层次表示特征深度学习

Haijun Zhang, Yinghui Chen
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引用次数: 1

摘要

大多数现代人脸识别和分类系统主要依赖于手工制作的图像特征描述符。在本文中,我们提出了一种新的结合无监督和监督学习的深度学习算法,称为嵌入Softmax回归的深度信念网络(DBNESR),作为获得额外的、互补的层次表示的自然来源,这有助于我们从复杂的手工特征设计步骤中解脱出来。DBNESR首先通过前馈(自下而上)和前向(自上而下)的贪婪分层无监督学习来学习特征的层次表示,然后通过监督学习使用Softmax回归进行更有效的识别。与仅基于监督学习的算法相比,我们再次提出并设计了多种分类器:BP、HBPNNs、RBF、HRBFNNs、SVM和多分类决策融合分类器(MCDFC)——混合HBPNNs-HRBFNNs-SVM分类器。实验验证了:首先,所提出的DBNESR对于人脸识别是最优的,具有最高和最稳定的识别率;第二,将无监督和监督学习相结合的算法比所有监督学习算法都有更好的效果;第三,混合神经网络比单模型神经网络具有更好的效果;第四,这些算法的平均识别率和方差按从大到小的顺序分别表示为DBNESR、MCDFC、SVM、HRBFNN、RBF、HBPNN、BP和BP、RBF、hbPNN、HRBFNNs、SVM、MCDFC和DBNESR;最后,从DBNESR对硬人工智能任务建模的能力上反映了DBNESR的特征层次表示。
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Hierarchical Representations Feature Deep Learning for Face Recognition
Most modern face recognition and classification systems mainly rely on hand-crafted image feature descriptors. In this paper, we propose a novel deep learning algorithm combining unsupervised and supervised learning named deep belief network embedded with Softmax regress (DBNESR) as a natural source for obtaining additional, complementary hierarchical representations, which helps to relieve us from the complicated hand-crafted feature-design step. DBNESR first learns hierarchical representations of feature by greedy layer-wise unsupervised learning in a feed-forward (bottom-up) and back-forward (top-down) manner and then makes more efficient recognition with Softmax regress by supervised learning. As a comparison with the algorithms only based on supervised learning, we again propose and design many kinds of classifiers: BP, HBPNNs, RBF, HRBFNNs, SVM and multiple classification decision fusion classifier (MCDFC)—hybrid HBPNNs-HRBFNNs-SVM classifier. The conducted experiments validate: Firstly, the proposed DBNESR is optimal for face recognition with the highest and most stable recognition rates; second, the algorithm combining unsupervised and supervised learning has better effect than all supervised learning algorithms; third, hybrid neural networks have better effect than single model neural network; fourth, the average recognition rate and variance of these algorithms in order of the largest to the smallest are respectively shown as DBNESR, MCDFC, SVM, HRBFNNs, RBF, HBPNNs, BP and BP, RBF, HBPNNs, HRBFNNs, SVM, MCDFC, DBNESR; at last, it reflects hierarchical representations of feature by DBNESR in terms of its capability of modeling hard artificial intelligent tasks.
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