新型冠状病毒肺炎大流行时代口罩监测的口罩检测管道开发:模块化方法

Benjaphan Sommana, U. Watchareeruetai, Ankush Ganguly, Samuel W. F. Earp, T. Kitiyakara, S. Boonmanunt, Ratchainant Thammasudjarit
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引用次数: 2

摘要

在SARS-Cov-2大流行期间,戴口罩成为防止病毒传播和感染的有效工具。监测人群中戴口罩率的能力将有助于确定针对该病毒的公共卫生战略。本文提出了一种两步人脸检测方法,该方法由两个独立的模块组成:1)人脸检测与对齐和2)人脸分类。这种方法允许我们对人脸检测和面罩分类模块的不同组合进行实验。更具体地说,我们尝试使用PyramidKey和retinface作为人脸检测器,同时为面罩分类模块保持轻量级主干。此外,我们还为AIZOO数据集的测试集提供了一个重新标记的注释,其中我们纠正了一些人脸图像的错误标签。在AIZOO和Moxa 3K数据集上的评估结果表明,所提出的面罩检测管道优于目前最先进的方法。提议的管道在AIZOO数据集的重新标记测试集上也产生了比原始测试集更高的mAP。由于我们使用野外人脸图像训练了所提出的模型,因此我们可以成功地将我们的模型部署到使用公共CCTV图像来监控戴面具率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of a face mask detection pipeline for mask-wearing monitoring in the era of the COVID-19 pandemic: A modular approach
During the SARS-Cov-2 pandemic, mask-wearing became an effective tool to prevent spreading and contracting the virus. The ability to monitor the mask-wearing rate in the population would be useful for determining public health strategies against the virus. In this paper, we present a two-step face mask detection approach consisting of two separate modules: 1) face detection and alignment and 2) face mask classification. This approach allows us to experiment with different combinations of face detection and face mask classification modules. More specifically, we experimented with PyramidKey and RetinaFace as face detectors while maintaining a lightweight backbone for the face mask classification module. Moreover, we also provide a relabeled annotation of the test set of the AIZOO dataset, where we rectified the incorrect labels for some face images. The evaluation results on the AIZOO and Moxa 3K datasets show that the proposed face mask detection pipeline surpassed the state-of-the-art methods. The proposed pipeline also yielded a higher mAP on the relabeled test set of the AIZOO dataset than the original test set. Since we trained the proposed model using in-the-wild face images, we can successfully deploy our model to monitor the mask-wearing rate using public CCTV images.
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