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Mask detection device based on YOLOv3 framework

机译:基于YOLOV3框架的掩模检测设备

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In early 2020, novel coronavirus pneumonia broke out. In order to prevent the spread of the disease, governments around the world asked the masses to wear masks. However, there are still many people who do not wear masks in public places. To solve this problem, this paper proposes a mask detection device based on yolo3 framework. The device uses the yolov3 algorithm to extract the face prediction area, and uses the gray image to calculate the skin exposure rate of the mouth and nose of the face, so as to judge whether the recognized person is wearing a mask or not and whether the mask is wearing correctly. The model is deployed on the hardware to facilitate the staff to carry the detection. The experimental results show that the recognition rate is 86.6%.
机译:2020年代初,新的冠状病毒肺炎爆发了。 为了防止疾病的传播,世界各地政府要求群众戴上面具。 然而,仍有许多人在公共场所不戴面具。 为了解决这个问题,本文提出了一种基于YOLO3框架的掩模检测装置。 该设备使用yolov3算法提取面部预测区域,并使用灰色图像来计算面部的嘴和鼻子的皮肤曝光率,从而判断认可的人是否戴着面具,是否呈现 面具穿着正确。 该模型部署在硬件上,以方便员工携带检测。 实验结果表明,识别率为86.6%。

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