Mask and Emotion: Computer Vision in the Age of COVID-19

S. Semerikov, T. Vakaliuk, I. Mintii, V. Hamaniuk, V. Soloviev, O. Bondarenko, P. Nechypurenko, S. Shokaliuk, N. Moiseienko, Vitalii R. Ruban
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引用次数: 6

Abstract

Computer vision systems since the early 1960s have undergone a long evolution and are widely used in various fields, in particular, in education for the implementation of immersive educational resources. When developing computer vision systems for educational purposes, it is advisable to use the computer vision libraries based on deep learning (in particular, implementations of convolutional neural networks). Computer vision systems can be used in education both under normal and pandemic conditions. The changes in the education industry caused by the COVID-19 pandemic have affected the classic educational applications of computer vision systems, modifying existing ones and giving rise to new ones, including social distancing, face mask recognition, intrusion detection in universities and schools, and vandalism prevention, recognition of emotions on faces with and without masks, attendance monitoring. Developed on the basis of Microsoft Cognitive Toolkit and deployed in the Microsoft Azure cloud, a prototype computer vision system integrates emotion recognition of students and detection of violations of the mask regime, additionally providing the ability to determine gender, smile intensity, average age, makeup, glasses, hair color, etc. with a high degree of reliability.
面具与情感:COVID-19时代的计算机视觉
计算机视觉系统自20世纪60年代初以来经历了漫长的发展,广泛应用于各个领域,特别是教育领域,用于实现沉浸式教育资源。当开发用于教育目的的计算机视觉系统时,建议使用基于深度学习的计算机视觉库(特别是卷积神经网络的实现)。计算机视觉系统可以在正常和流行病条件下用于教育。新冠肺炎疫情给教育行业带来的变化,影响了计算机视觉系统的经典教育应用,改变了现有的应用,催生了新的应用,包括社交距离、口罩识别、大学和学校的入侵检测、防止破坏、戴口罩和不戴口罩的面部表情识别、考勤监控。基于微软认知工具包开发并部署在微软Azure云上的原型计算机视觉系统,集成了学生的情绪识别和违反面具制度的检测,另外还提供了确定性别、微笑强度、平均年龄、化妆、眼镜、头发颜色等的能力,具有高度的可靠性。
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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