RESEARCH ON REAL-TIME DETECTION METHOD OF FACE WEARING MASK WITH LARGE TRAFFIC BASED ON DEEP LEARNING

Y. Meng, N. Liu, Z. Su, X. Wang, H. Wang
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引用次数: 2

Abstract

Aiming at the problem of low accuracy of traditional face detection methods for large-volume mask-wearing people during the prevention and control of the new crown pneumonia epidemic, this paper proposes a real-time detection method for large-volume mask-wearing faces based on deep learning. The method uses the overall design of the backbone network, the FPN feature fusion network, the detection network and the parameter optimization method of the algorithm, and completes the model training on the mask-wearing face training set. In the detection process, the NMS algorithm is used to post-process the prediction results to realize multi-scale perception of the input face and improve the detection accuracy of the face wearing a mask. Experimentally verified, the detection accuracy of this method on the mask-wearing face test set is 0.919, and the average of Easy-0.841, Medium-0.802 and Hard-0.600 is obtained on the three subsets of the WIDER FACE test set. Detection accuracy (mAP). Compared with traditional face detection methods, it has universal advantages, and the video inference speed of the method in this paper reaches 55fps, which can meet the task requirements of real-time face detection with large traffic. In addition, the project team has successfully deployed this method to a fully automatic infrared thermal imaging temperature measurement warning system and put it into use in many places in Beijing, which is of great significance to preventing the spread of the epidemic.
基于深度学习的大流量口罩人脸实时检测方法研究
针对新冠肺炎疫情防控过程中,传统人脸检测方法对大量佩戴口罩人群检测准确率较低的问题,本文提出了一种基于深度学习的大批量佩戴口罩人脸实时检测方法。该方法采用骨干网、FPN特征融合网络、检测网络的总体设计和算法的参数优化方法,在戴面具人脸训练集上完成模型训练。在检测过程中,采用NMS算法对预测结果进行后处理,实现对输入人脸的多尺度感知,提高对戴口罩人脸的检测精度。实验验证,该方法在口罩面部测试集上的检测准确率为0.919,在WIDER face测试集的三个子集上的均值为Easy-0.841, Medium-0.802和Hard-0.600。检测精度(mAP)。与传统的人脸检测方法相比,具有通用性优势,本文方法的视频推理速度达到55fps,可以满足大流量实时人脸检测的任务要求。此外,项目组已将该方法成功部署到北京多处全自动红外热成像测温预警系统中,并投入使用,对预防疫情蔓延具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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