N. Setyawan, Tri Septiana Nadia Puspita Putri, Mohamad Al Fikih, N. Kasan
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引用次数: 0
摘要
冠状病毒病(COVID-19)正受到全世界人民的特别关注。COVID-19病毒的传播几乎在全世界蔓延,包括正在经历危机的印度尼西亚,特别是在卫生和经济部门。在预防方面,政府正在实施大规模的社会限制,公共服务或公共场所要求人们戴口罩。在此期间,口罩的检测是由安保人员手工观察完成的,耗时较长。本研究将应用深度学习图像处理的面具检测系统(Face mask detection)。本研究采用了目前最流行的深度学习模型,包括卷积神经网络(CNN)和You Only Look Once (YOLOv3)方法。在训练步骤中,使用头部属性(如hijab, hats)和不使用属性的人脸图像所获取的数据集有所不同。此外,这些照片主要拍摄于印度尼西亚等亚洲、欧洲、美洲等多个国家。该系统将目标检测分类、图像和目标跟踪相结合,开发了一种检测图像或摄像机视频中使用掩模或不使用掩模人脸的系统。通过对图像和摄像机视频流在训练和部署阶段进行的对比分析,YOLOv3能够以4.8 FPS的速度比CNN更快准确地进行检测。
Comparative Study of CNN and YOLOv3 in Public Health Face Mask Detection
Coronavirus Disease (COVID-19) is gaining special concern from entire world population. The transmission of the COVID-19 virus is spreading almost in whole the world, including Indonesia which undergoing a crisis, especially in the health and economic sector. In prevention, the government is implementing Large-Scale Social Restrictions which public services or public places require people to wear masks. During this time, the detection of masks is done manually with observations from security personnel, which is time consuming. This study will apply a mask detection system (Face Mask Detection) using deep learning image processing. This study apply the most popular deep learning model which consist Convolutional Neural Networks (CNN) and You Only Look Once (YOLOv3) method. In training step, the datasets taken vary with images of faces that using head attribute such as hijabs, hats, and not using attributes. In addition, the images were taken from various countries such as Asia including Indonesia mostly, Europe, and the Americas. The system used a combination of object detection classification, image, and object tracking to develop a system that detects using a mask or not using a mask faces in images or camera videos. From the comparative analysis which developed in training and deploying step with image and camera video stream, YOLOv3 can detect accurately and faster with 4.8 FPS than CNN.