Real-Time Mask Recognition

R. M. Billings, Alan J. Michaels
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引用次数: 1

Abstract

While a variety of image processing studies have been performed to quantify the potential performance of neural network-based models using high-quality still images, relatively few studies seek to apply those models to a real-time operational context. This paper seeks to extend prior work in neural-network-based mask detection algorithms to a real-time, low-power deployable context that is conducive to immediate installation and use. Particularly relevant in the COVID-19 era with varying rules on mask mandates, this work applies two neural network models to inference of mask detection in both live (mobile) and recorded scenarios. Furthermore, an experimental dataset was collected where individuals were encouraged to use presentation attacks against the algorithm to quantify how perturbations negatively impact model performance. The results from evaluation on the experimental dataset are further investigated to identify the degradation caused by poor lighting and image quality, as well as to test for biases within certain demographics such as gender and ethnicity. In aggregate, this work validates the immediate feasibility of a low-power and low-cost real-time mask recognition system.
实时掩码识别
虽然已经进行了各种图像处理研究,以量化使用高质量静止图像的基于神经网络的模型的潜在性能,但相对较少的研究试图将这些模型应用于实时操作环境。本文旨在将基于神经网络的掩码检测算法的先前工作扩展到实时,低功耗可部署的环境中,有利于立即安装和使用。在COVID-19时代,由于口罩要求的规则不同,这项工作将两个神经网络模型应用于现场(移动)和记录场景下的口罩检测推理。此外,收集了一个实验数据集,其中鼓励个人使用针对算法的表示攻击来量化扰动如何对模型性能产生负面影响。对实验数据集的评估结果进行进一步研究,以确定由光线不足和图像质量引起的退化,并测试某些人口统计数据(如性别和种族)中的偏差。总的来说,这项工作验证了低功耗和低成本实时掩模识别系统的可行性。
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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