基于深度学习和机器学习分类器的人脸识别比较研究

Prashant Ghimire, Sweekar Piya, Anish Man Gurung
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引用次数: 1

摘要

冠状病毒(COVID-19)仍然流行,约有1.94亿例病例,约400万人报告死亡,影响220个国家[1]。在人群密集地区佩戴口罩是世界卫生组织(世卫组织)提供的众多预防指南中要求不高且有效的措施之一。然而,不守规矩的人类是存在的;监测人们在人口密集地区是否戴口罩是一项繁重而繁琐的工作。在本文中,为了进行比较,我们实验了两种处理面罩检测的方法:(1)通过在四个预训练的最先进(SOTA)模型- Inception-V3, Resnet-50, VGG-16和Densenet-121上使用迁移学习,(2)使用这些SOTA模型作为特征提取器并在其上训练ML分类器(支持向量机(SVM),决策树和高斯朴素贝叶斯)。模拟面罩数据集(SMFD)用于训练和验证所有模型,包括数据增强以增强数据样本。SOTA模型显示出优异的验证精度(大于90%),其中VGG-16和ResNet-50表现最好。同样,SOTA-ML模型的所有组合都具有显著的性能,其中Densenet-121-SVM模型以较少的训练时间获得了最高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative study of Face Mask Recognition using Deep Learning and Machine learning classifiers
With around 194 million cases and around 4 million reported deaths, affecting 220 countries [1], Coronavirus (COVID-19) is still prevalent. Wearing facemasks in crowded areas is one of the undemanding and effective measures among the multitude of preventive guidelines provided by the World Health Organization (WHO). However, unruly humans are present; monitoring if people are wearing facemasks in dense areas is taxing and cumbersome. In this paper, we have experimented two ways of tackling facemask detection for comparison purposes: (1) by using transfer learning on four pretrained State-Of- The-Art (SOTA) models - Inception-V3, Resnet-50, VGG-16, and Densenet-121, (2) using these SOTA models as feature extractors and training ML classifiers (Support Vector Machine (SVM), Decision Tree, and Gaussian Naive Bayes) on them. Simulated Face Mask Dataset (SMFD) is used to train and validate all of the models, including data augmentation to enhance data samples. The SOTA models displayed exceptional validation accuracy (greater than 90%), with VGG-16 and ResNet-50 performing the best. Similarly, all combinations of SOTA-ML models have remarkable performance with the Densenet-121-SVM model obtaining highest accuracy with lesser training time.
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