一种实时检测面罩类型的迁移学习方法

Takia Ibnath, Ashim Dey
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摘要

口罩被认为是具有保护人类免受脆弱处境能力的防护设备。虽然有各种各样的口罩专门设计用于不同的目的,但严重缺乏对正确使用的关注。因此,它们的普遍化使用可能会导致许多危及生命的问题。因此,可以检测口罩类型的系统可以发挥救生作用,以确保这些安全装备的正确使用。为此,通过手动标记人脸图像构建自定义数据集,该数据集包括8个类别。实现了Scratch CNN和四个迁移学习模型,并对它们的性能进行了全面的评估和多重标准的评估,以选择最好的一个。通过调查发现,SSD MobNet V2的准确率最高,达到83%。所开发的系统从摄像机输入实时视频流,可以检测不同条件下的掩模类型。
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Toward a Transfer Learning Approach to Detect Face Mask Type in Real-time
Face masks are considered protective equipment that has the ability to safeguard humans from vulnerable situations. Although there exists a wide range of masks specifically designed for diverse purposes, there is a terrible lack of concern regarding proper usage. Consequently, the generalization of their usage can cause many life-threatening problems. As a result, a system that can detect the type of face mask can play a life-saving role to ensure the proper usage of these safety gear. With this aim, a custom dataset was built by manually labeling face mask images which include 8 classes. Scratch CNN and four transfer learning models have been implemented and their performance was thoroughly evaluated and assessed on multiple criteria to select the best one. Based on the investigation, it is found that SSD MobNet V2 achieved the highest accuracy of 83%. The developed system takes real-time video stream input from the camera and can detect the type of mask in different conditions.
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