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Finessing filter scarcity problem in face recognition via multi-fold filter convolution

机译:通过多折过滤器卷积,对人脸识别的稀缺问题进行稀缺问题

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摘要

The deep convolutional neural networks for face recognition, from DeepFace to the recent FaceNet, demand a sufficiently large volume of filters for feature extraction, in addition to being deep. The shallow filter-bank approaches, e.g., principal component analysis network (PCANet), binarized statistical image features (BSIF), and other analogous variants, endure the filter scarcity problem that not all PCA and ICA filters available are discriminative to abstract noise-free features. This paper extends our previous work on multi-fold filter convolution (m-FFC), where the pre-learned PCA and ICA filter sets are exponentially diversified by m folds to instantiate PCA, ICA, and PCA-ICA offspring. The experimental results unveil that the 2-FFC operation solves the filter scarcity state. The 2-FFC descriptors are also evidenced to be superior to that of PCANet, BSIF, and other face descriptors, in terms of rank-1 identification rate (%).
机译:对于近识别的深度卷积神经网络,从近期面部到最近的面部,需要足够大量的滤波器进行特征提取,除了深度。浅层滤波器 - 银行方法,例如主成分分析网络(PCANet),二值化统计图像特征(BSIF)和其他类似变体,突出过滤稀缺问题,并非所有PCA和ICA过滤器都可以辨别抽象无噪声特征。本文扩展了我们对多折过滤器卷积(M-FFC)的工作,其中预先学习的PCA和ICA过滤器集是由M折叠到实例化PCA,ICA和PCA-ICA后代的多样化。实验结果揭示了2-FFC操作解决过滤稀释状态。在秩-1识别率(%)方面,2-FFC描述符也证明了优于PCANet,BSIF和其他面部描述符的描述符。

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