基于知识蒸馏的口罩检测预防新冠肺炎传播

Ambika Lakhera, Priyansh Jain, Ruchi Gajjar, Manish I. Patel
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引用次数: 1

摘要

新型冠状病毒大流行(COVID-19)在全球范围内迅速蔓延。这种大流行疾病可以通过飞沫传播,也可以通过空气传播。因此,在公共场所使用口罩对于阻止其传播至关重要。本研究旨在开发一种能够识别蒙面或非蒙面人脸的系统;无论是普通口罩、透明口罩,还是同类口罩。面罩检测系统是借助卷积神经网络(CNN)开发的。采用知识蒸馏的模型压缩技术,降低了机器的计算量和内存消耗,使模型易于安装在一些嵌入式设备和单元计算平台上。使用模型压缩技术和GPU系统将有助于提高模型的计算速度,减少计算所需的存储空间。实验结果表明,该检测器能够对不同类型的掩模进行分类。此外,它还可以对视频图像进行实时分类。在基线模型上使用知识蒸馏可以将测试精度从88.79%提高到90.13%。该独特的系统可用于协助预防COVID-19的传播并检测各种口罩类型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face Mask Detection for Preventing the Spread of Covid-19 using Knowledge Distillation
The coronavirus pandemic (COVID-19) has unfolded hastily throughout the entire world. This pandemic disease can spread through droplets and can be airborne. Hence, the use of face masks in public places is crucial to stop its spread. The present study aims to develop a system that can identify masked or non-masked faces; whether it is a normal mask, transparent mask, or a face alike mask. The face mask detection system is developed with the help of Convolutional Neural Networks (CNN). The model compression technique of Knowledge Distillation has been used to make the machine lesser computation and memory intensive so that it is simple to install the model on a few embedded gadgets and cell computing platforms. Using the model compression technique and GPU systems will help boom the calculation velocity of the model and drop the storage space required for calculations. The experimental outcomes show that the developed detector is capable to classify diverse types of masks. Also, it can classify video images in real-time. Using the Knowledge Distillation on the baseline model can improve the testing accuracy from 88.79% to 90.13%. The proposed unique system can be implemented to assist in the prevention of COVID-19 spread and detect various mask types.
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