Face Recognition Based on Stacked Convolutional Autoencoder and Sparse Representation

Liping Chang, Jianjun Yang, Sheng Li, Hong Xu, Kai Liu, Chaogeng Huang
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引用次数: 9

Abstract

Face recognition is one of the most challenging topics in the field of machine vision and pattern recognition, and has a wide range of applications. The face features play an important role in the classification, while the features extracted by traditional methods are simple and elementary. To solve this problem, a stacked convolutional autoencoder (SCAE) based on deep learning theory is used to extract deeper features. The output of the encoder can be taken to design a feature dictionary. Meanwhile sparse representation is a general classification algorithm which has shown the good performance in the field of object recognition. In this paper a framework based on stacked convolutional autoencoder and sparse representation is proposed. Experiments, carried out with the LFW face database, have shown that the proposed framework can extract more deep and abstract features by multi-level cascade, and has high recognition speed and high accuracy.
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基于堆叠卷积自编码器和稀疏表示的人脸识别
人脸识别是机器视觉和模式识别领域最具挑战性的课题之一,具有广泛的应用前景。人脸特征在分类中起着重要的作用,而传统方法提取的特征简单、初级。为了解决这一问题,采用基于深度学习理论的堆叠卷积自编码器(SCAE)来提取更深层次的特征。编码器的输出可以用来设计一个特征字典。同时,稀疏表示是一种通用的分类算法,在目标识别领域表现出了良好的性能。本文提出了一种基于堆叠卷积自编码器和稀疏表示的框架。利用LFW人脸数据库进行的实验表明,该框架可以通过多级级联提取更多的深度和抽象特征,具有较高的识别速度和精度。
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