一种基于快速yolo算法的人脸检测方法

Chih-Chen Liu, Su-Chi Fuh, Chen-Jie Lin, Tzu-Hua Huang
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引用次数: 6

摘要

新冠肺炎极高的传播率使世界各国医疗资源供应紧张。为避免群体感染而实行隔离,对经济、交通、教育等方面产生了严重影响。防疫工作将是一项需要长期开展、不容忽视的日常工作。鉴于戴口罩是目前一种有效的防疫方法,而目前的人脸检测模型对戴口罩的人,以及没有正确佩戴口罩的行人并不有效。它可能会传播这种流行病。本研究将建立具有三种标注的人脸数据集,结合多种深度学习卷积神经网络架构和方法,设计能够快速训练和检测戴口罩、不戴口罩、戴口罩不正确的人脸的人脸检测模型。我们使用自适应算法调整图像大小以减少不必要的操作,并修改CIOU_LOSS错误函数以加快操作速度,希望能为防疫工作做出贡献。实验证明,在相同精度下,我们的算法比YOLO v5m节省了70%的时间。
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A Novel Facial Mask Detection Using Fast-YOLO Algorithm
The extremely high transmission rate of the COVID-19 has made the supply of medical resources in countries around the world in short supply. The implementation of quarantine in order to avoid group infections has a serious impact on the economy, transportation, education and other aspects. Epidemic prevention will be a routine task that needs to be carried out for a long time and cannot be neglected. In view of the fact that wearing masks is currently an effective method of epidemic prevention, and the current face detection models are not effective for masked faces, and pedestrians who have not worn masks in the correct way. It may spread the epidemic. This research will establish a face data set with three kinds of annotations, and combine a variety of deep learning convolutional neural network architectures and methods to design a face detection model that can quickly train and detect wearing a mask, not wearing a mask, and wearing a mask incorrectly faces. In the hope of contributing to the epidemic prevention, we use an adaptive algorithm to adjust the image size to reduce unnecessary operations, and modify the CIOU_LOSS error function to speed up the operation. Experiments have confirmed that our algorithm saves 70% of the time compared to YOLO v5m with the same accuracy.
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