用软注意检测口罩的正确使用

Thomas Truong, Dhyey Lalseta, Ryan Ittyipe, S. Yanushkevich
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引用次数: 2

摘要

事实证明,在COVID-19大流行等情况下,在公共场所正确使用口罩对于减少感染传播至关重要。在本文中,我们提出了基于深度学习的掩码使用检测方法:一个掩码区域卷积神经网络(mask R-CNN)提供人脸和掩码的分割,另一个CNN使用新的软注意单元来检测掩码使用的正确性。我们还为实例分割问题提供了一个小的面罩(MAFA)数据集的实例分割子集。我们使用Mask R-CNN为视觉关系检测CNN提供人脸和口罩的实例分割,并预测不正确和正确佩戴的口罩。我们对ResNet50等各种CNN架构进行了测试和比较,以确定其对上述任务的有效性。我们评估了CNN架构的准确性、精密度、召回率和检测正确佩戴口罩的特异性。结果表明,最佳网络为ResNet50V2,准确率为76.27%,精密度为84.76%,召回率为74.38%,特异性为79.20%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Proper Mask Usage with Soft Attention
Proper mask usage in public areas has been shown to be critical in the efforts to reduce infection spread in circumstances such as the COVID-19 pandemic. In this paper, we propose mask usage detection approach based on deep learning: a Mask Regional-Convolutional Neural Network (Mask R-CNN) that provides segmentation of faces and masks, and another CNN using a novel Soft Attention unit to detect the correctness of the mask usage. We also provide a small instance segmented subset of the Masked Faces (MAFA) dataset for instance segmentation problems. We use the Mask R-CNN to provide instance segmentations of faces and face masks to the visual relationship detection CNN and predict improperly and properly worn face masks. Various CNN architectures such as ResNet50 were tested and compared to determine its effectiveness for the above task. We evaluate the CNN architectures on accuracy, precision, recall, and specificity of detecting properly worn masks. The best performing network was determined to be the ResNet50V2 architecture with 76.27% accuracy, 84.76% precision, 74.38% recall, and 79.20% specificity.
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