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PCAPooL: unsupervised feature learning for face recognition using PCA, LBP, and pyramid pooling

机译:PCAPooL:使用PCA,LBP和金字塔池进行无监督特征学习,以进行人脸识别

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摘要

Human face is a widely used biometric modality for verification and revealing the identity of a person. In spite of a great deal of research on face recognition, it still is a challenging issue. Recently, the outstanding performance of deep learning has attracted a good deal of research interest for face recognition. In comparison with hand-engineered features, learning-based face features have proven their superiority in encoding discriminative information. Inspired by deep learning, we introduce a simple and efficient unsupervised feature learning scheme for face recognition. This scheme employs principle component analysis (PCA), local binary pattern (LBP), and pyramid pooling. Following the architecture of a convolutional neural network, the proposed scheme contains three types of layers: convolutional, nonlinear, and pooling layers. PCA is used to learn a filter bank for the convolutional layer. This is followed by LBP operator that encodes the local texture and adds nonlinearity to the feature maps of convolutional layer, which are then pooled using spatial pyramid pooling. To corroborate the effectiveness of the scheme (which we call as PCAPool), extensive experiments were performed on challenging benchmark databases: FERET, Yale, Extended Yale B, AR, and multi-PIE. The comparison reveals that PCAPool performs better than the state-of-the-art methods.
机译:人脸是一种广泛使用的生物特征识别方法,用于验证和揭示人的身份。尽管在面部识别方面进行了大量研究,但这仍然是一个具有挑战性的问题。最近,深度学习的出色表现吸引了很多人脸识别的研究兴趣。与手工设计的特征相比,基于学习的面部特征已证明其在编码区分性信息方面的优势。受到深度学习的启发,我们引入了一种简单有效的无监督特征学习方案来进行人脸识别。该方案采用主成分分析(PCA),局部二进制模式(LBP)和金字塔池。遵循卷积神经网络的体系结构,提出的方案包含三种类型的层:卷积层,非线性层和池化层。 PCA用于学习卷积层的滤波器组。然后是LBP运算符,该运算符对局部纹理进行编码,并向卷积层的特征图添加非线性,然后使用空间金字塔池将其池化。为了证实该方案(我们称为PCAPool)的有效性,我们在具有挑战性的基准数据库上进行了广泛的实验:FERET,Yale,Extended Yale B,AR和multi-PIE。比较表明,PCAPool的性能优于最新方法。

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