Mask and respirator detection: analysis and potential solutions for a frequently ill-conditioned problem

A. C. Marceddu, R. Ferrero, B. Montrucchio
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Abstract

During the coronavirus pandemic, the mask detection problem has become of particular interest. Usually, the goal is to create a system that can detect whether or not a person is wearing a mask or respirator. However, this tends to trivialize a problem that hides a greater complexity. In fact, people wear masks or respirators in various ways, many of which are incorrect. This makes the problem ill-conditioned and creates a bias compared to training cases, with the consequence that these systems have a considerably lower accuracy when used in practice. We claim that focusing on the ways in which a mask can be worn and classifying the problem not as binary but at least as ternary, thus adding an intermediate class containing all those ways in which a mask or respirator can be worn incorrectly, could help address this problem. For this reason, this paper describes and puts to the proof the Ways to Wear a Mask or a Respirator Database (WWMR-DB). It has a fine classification of the most common ways in which a mask or respirator is worn, which can be used to test how mask detection systems work in cases that resemble the real ones more. It was used to test a neural network, the ResNet-152, which was trained on less fine databases, like the Face-Mask Label Dataset and the MaskedFace-Net. The mixed results denote the shortcomings of these databases and the need to enhance them or resort to finer databases.
口罩和呼吸器检测:分析和潜在的解决方案,对一个经常生病的问题
在冠状病毒大流行期间,口罩检测问题已成为特别关注的问题。通常,目标是创建一个系统,可以检测一个人是否戴着口罩或呼吸器。然而,这往往会使隐藏着更大复杂性的问题变得无足轻重。事实上,人们戴口罩或呼吸器的方式多种多样,其中很多都是不正确的。与训练案例相比,这使得问题变得病态,并产生偏见,结果是这些系统在实践中使用时具有相当低的准确性。我们声称,专注于口罩的佩戴方式,并将问题分类为三元,而不是二元,从而增加一个中间类别,包含所有可能不正确佩戴口罩或呼吸器的方式,可以帮助解决这个问题。为此,本文介绍并证明了口罩佩戴方法或呼吸器数据库(WWMR-DB)。它对佩戴口罩或呼吸器的最常见方式进行了精细分类,可用于测试口罩检测系统在更接近真实病例的情况下的工作情况。它被用来测试一个神经网络,ResNet-152,它是在不太好的数据库上训练的,比如Face-Mask Label Dataset和MaskedFace-Net。不同的结果表明这些数据库有缺点,需要改进它们或使用更好的数据库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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