Convolutional Approach Also Benefits Traditional Face Pattern Recognition Algorithm [208!]

Yunke Li, Hongyuan Shi, Liang Chen, Fan Jiang
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引用次数: 7

Abstract

Convolutional neural networks (CNN) are widely used deep learning frameworks and are applied in the field of face recognition, achieving outstanding results. The Macropixel comparison approach is a shallow mathematical approach that recognizes faces by comparing the original pixel blocks of face images. In this article, the authors are inspired by ideas of the currently popular deep neural network framework and introduce two features into the mathematical approach: deep overlap and weighted filter. The aim is to explore if the idea of deep learning could benefit mathematical recognition method, which might extend the scope of face recognition research. Results from the experiments show that the new proposed approach achieves markedly better recognition rates than the original macropixel methods.
卷积方法也有利于传统的人脸模式识别算法[208!]
卷积神经网络(CNN)是应用广泛的深度学习框架,在人脸识别领域得到了应用,取得了突出的效果。Macropixel比较方法是一种浅层的数学方法,通过比较人脸图像的原始像素块来识别人脸。在本文中,作者受到当前流行的深度神经网络框架思想的启发,在数学方法中引入了两个特征:深度重叠和加权滤波。目的是探索深度学习的思想是否有利于数学识别方法,这可能会扩大人脸识别研究的范围。实验结果表明,该方法的识别率明显高于原有的宏像素方法。
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