基于卷积神经网络的面罩检测

R. Chandana, S. Ranganatha, Sanjay
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引用次数: 1

摘要

由于新冠肺炎大流行,在公共场所必须佩戴口罩,因为它对病毒传播具有最大的预防作用。它在很大程度上影响了我们的日常生活。虽然人们已经接种了疫苗,但戴口罩,保持社交距离和卫生处理可能需要实施,直到大流行消失。提出工作布局实时深度学习版本,满足当前在人员进入公共场所前检测口罩佩戴位置的需求。本文提供了在机器学习应用程序(如TensorFlow, Keras, OpenCV和MobileNet)中实现预期目标的简化方法。该方法实时确定口罩的佩戴方式;它利用实时图像捕获,提供关于一个人是否正确佩戴口罩的准确信息。卷积神经网络模型的参数被用来检测人脸的存在。该方法的准确率接近99.75%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of a Facemask Using Convolution Neural Network
Due to the COVID-19 pandemic, wearing the mask has become obligatory in public locations as it gives a most preventive impact in opposition to viral transmission. It has affected our day-to-day life to a greater extent. Though people had got vaccinated, mask wearing, social distance maintenance and sanitization need to be practiced probably till the pandemic gets vanished. Proposed work layout a real-time deep learning version to satisfy current demand for detection of facemask wearing position of someone earlier than he or she enters a public place. This paper provides a simplified method for achieving the intended goal in machine learning applications such as TensorFlow, Keras, OpenCV, and MobileNet. The proposed approach determines how the face mask is worn in real time; it leverages live image captures that provide accurate information about whether a person is wearing the mask appropriately. The parameters of the convolution neural network model are used to detect the presence of facial mask(s). The proposed approach attains the accuracy that is almost nearer to 99.75%.
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