一种新的人体安全口罩分类技术

P. Nagaraj, Gunta Sherly Phebe, Anupam Singh
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引用次数: 3

摘要

计算机视觉学习是一个主要的关注领域,因为全球流行的COVID-19日益流行,这将通过提高普通人群的健康水平而有利于医疗保健管理。在活动中,识别小事物是一项非常麻烦的任务,因为它包括在图片下进行排列和查找。比起竞争对手,最令人印象深刻的功能是能够区分某物是脸还是面纱。无论如何,那些传播疾病的人受益于YOLOv3的进展。在GPU性能方面,涉及到人脸识别的YOLOv3的实现有很好的性能。虽然它是轻的记忆和适合当前的趋势。在我们的蒙面照片中,戴面纱和不戴面纱的人数是一样的。持续的视频信息最终成为评估的一部分,因为它考虑到了隐私、位置和许可等问题。试验结果表明,在准备4000名儿童时,典型的不幸水平为0.0730。在新的mAP(我的自主编程)评分报告后,来自4000个年龄段的人的评分为0.96。该表示技术实现了人脸覆盖识别,识别准确率达96%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Technique to Classify Face Mask for Human Safety
Computer vision learning is a major area of focus because to the growing prevalence of the globally epidemic COVID-19, which will benefit healthcare management by increasing wellness in the general population. During the event, recognizing little things is a really troublesome errand of PC vision, as it incorporates getting arrangement and finding things underneath of pictures. Instead of rivals, the most impressive feature was being able to tell whether something is a face or a veil. Regardless, those that spread the disease benefit from the YOLOv3 advancements. In respect to GPU performance, the implementation of YOLOv3, which involves face veil identification, has a good performance. Though it is light on memory and appropriate with the current trend. For our face-cover photo, we got the same number of people who wear veils and who don’t. Constant video information ended up as part of the assessment since it concluded over concerns including privacy, location, and permission. The findings of the trials indicate that in preparation for 4,000 children, typical misfortune levels are 0.0730. After the new mAP (My Autonomous Programming) scores from 4,000 ages have been reported: they have a rating of 0.96. This technique of representation accomplished facial cover recognition with a yield of 96% identification accuracy.
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