Department of Computer Science and Engineering, Indian Institute of Information Technology Kottayam, Kottayam 686635, India.
Department of Studies in Computer Science, Mysore University, Manasagangothri, Mysore 570006, India.
Sensors (Basel). 2023 Jul 2;23(13):6090. doi: 10.3390/s23136090.
A new artificial intelligence-based approach is proposed by developing a deep learning (DL) model for identifying the people who violate the face mask protocol in public places. To achieve this goal, a private dataset was created, including different face images with and without masks. The proposed model was trained to detect face masks from real-time surveillance videos. The proposed face mask detection (FMDNet) model achieved a promising detection of 99.0% in terms of accuracy for identifying violations (no face mask) in public places. The model presented a better detection capability compared to other recent DL models such as FSA-Net, MobileNet V2, and ResNet by 24.03%, 5.0%, and 24.10%, respectively. Meanwhile, the model is lightweight and had a confidence score of 99.0% in a resource-constrained environment. The model can perform the detection task in real-time environments at 41.72 frames per second (FPS). Thus, the developed model can be applicable and useful for governments to maintain the rules of the SOP protocol.
提出了一种新的基于人工智能的方法,通过开发深度学习 (DL) 模型来识别在公共场所违反口罩协议的人。为了实现这一目标,创建了一个私人数据集,其中包括带有和不带有口罩的不同人脸图像。所提出的模型经过训练,可以从实时监控视频中检测人脸口罩。所提出的口罩检测 (FMDNet) 模型在公共场所识别违规行为(未戴口罩)方面的准确率达到了 99.0%,表现出了令人鼓舞的检测性能。与其他最近的 DL 模型(如 FSA-Net、MobileNet V2 和 ResNet)相比,该模型的检测能力分别提高了 24.03%、5.0%和 24.10%。同时,该模型轻量级,在资源受限的环境中置信度评分为 99.0%。该模型可以在实时环境中以每秒 41.72 帧的速度执行检测任务。因此,所开发的模型可适用于政府部门来维护标准作业程序协议的规则。