实时人脸检测使用TINY-YOLO V4

Kavi Varun Sathyamurthy, A.R. Shri Rajmohan, A. Ram Tejaswar, K. V, G. Manimala
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引用次数: 4

摘要

在2019冠状病毒病大流行期间,有必要保持社交距离,并通过使用口罩和适当的卫生预防措施来优先考虑个人卫生。这虽然很难被准确有效地监测和控制,但可以通过使用卷积神经网络的目标检测来实现。这可以通过使用Tiny-YOLOv4来实现,这是一种对象检测算法,可以在不使用此类硬件资源的情况下为许多类别的对象提供闪电般的快速检测。本项目旨在使用该算法训练和测试自定义数据集,以创建一个高效准确的面罩检测系统,该系统可以轻松定制以添加附加功能,如警告系统等。它的目标是成为一个在大流行结束后可以证明有用的系统,因为它为预防和控制未来可能发生的任何其他可能的大流行提供关键数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Realtime Face Mask Detection Using TINY-YOLO V4
In the time of the Covid-19 pandemic there is a need to maintain social distancing and prioritize personal hygiene by the use of face masks and proper sanitary precautions. This although is hard to be monitored and controlled accurately and efficiently, can be done through the use of object detection using convolutional neural networks. This can be done in a way using Tiny-YOLOv4 which is an object detection algorithm that provides lightning-fast detection for many classes of objects without the use of such hardware resources. This project aims to train and test a custom data set using this algorithm to create a highly efficient and accurate face mask detection system that can be easily customized to add additional features such as warning systems, etc. It aims to be a system that can prove to be useful once the pandemic is over as it provides crucial data for the prevention and control of any other possible pandemics that may occur in the future.
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