优化算法对人脸识别神经网络性能的影响

M. Ali, D. Kumar
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引用次数: 0

摘要

人脸识别由于其实际应用,引起了许多行业的极大兴趣。它是一种生物识别方法,用于可靠、及时地识别和认证具有独特生物特征的人。虽然虹膜和指纹识别技术更准确,但人脸识别技术是最常见和最常用的,因为它易于部署和执行,并且不需要用户的任何物理输入。本研究比较了使用(SGD、Adam或L-BFGS-B)优化器的神经网络,它们具有不同的激活函数(Sigmoid、Tanh或ReLU),以及包括Squeeze Net、VGG19或Inception模型在内的深度学习特征提取方法。在精度方面,初始模型优于Squeeze Net和VGG19。在初始模型的基础上,我们利用带有ReLU激活函数的SGD优化器,在4层40个神经元的神经网络中实现了93.6%的准确率。我们还注意到,基于初始模型的发现,使用ReLU激活函数与三种优化器中的任何一种都获得了最好的结果,因为它分别为SGD, Adam和BFGS每种优化算法实现了93.6%,89.1%和94%的准确性。这是一篇在知识共享署名许可(http://creativecommons.org/licenses/by/4.0/)条款下发布的开放获取文章,该许可允许在任何媒介上不受限制地使用、分发和复制,只要原始作品被适当引用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Impact of Optimization Algorithms on The Performance of Face Recognition Neural Networks
Face recognition has aroused great interest in a range of industries due to its practical applications nowadays. It is a biometric method that is used to identify and certify people with unique biological traits in a reliable and timely manner. Although iris and fingerprint recognition technologies are more accurate, face recognition technology is the most common and frequently utilized since it is simple to deploy and execute and does not require any physical input from the user. This study compares Neural Networks using (SGD, Adam, or L-BFGS-B) optimizers, with different activation functions (Sigmoid, Tanh, or ReLU), and deep learning feature extraction methodologies including Squeeze Net, VGG19, or Inception model. The inception model outperforms the Squeeze Net and VGG19 in terms of accuracy. Based on the findings of the inception model, we achieved 93.6% of accuracy in a neural network with four layers and forty neurons by utilizing the SGD optimizer with the ReLU activation function. We also noticed that using the ReLU activation function with any of the three optimizers achieved the best results based on findings of the inception model, as it achieved 93.6%, 89.1%, and 94% of accuracy for each of the optimization algorithms SGD, Adam, and BFGS, respectively.This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium provided the original work is properly cited.
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