Haghpanah Mohammad Amin, Vali Sina, Mousavi Torkamani Amin, Tale Masouleh Mehdi, Kalhor Ahmad, Akhavan Sarraf Ehsan
Human and Robot Interaction Laboratory, School of Electrical and Computer Engineering, University of Tehran, Tehran, Iran.
Human and Robot Interaction Laboratory, University of Tehran, Tehran, Iran.
Expert Syst Appl. 2023 May 15;218:119588. doi: 10.1016/j.eswa.2023.119588. Epub 2023 Jan 21.
Hand hygiene plays a crucial role in healthcare environments which can cease infections and diseases from spreading. It is also regarded as the second most effective way to control the transmission of COVID-19. The World Health Organization (WHO) recommends a 12-step guideline for alcohol-based hand rubbing. Compliance with this guideline is vital in order to clean the hands thoroughly. Hence, an automated system can help to improve the quality of this procedure. In this study, a large-scale and diverse dataset for both real and fake hand rubbing motions is collected as the first stage of building a reliable hand hygiene system. In the next stage, various pre-trained networks were analyzed and compared using a swift version of the Separation Index (SI) method. The proposed Swift SI method facilitates choosing the best pre-trained network without fine-tuning them on the whole dataset. Accordingly, the Inception-ResNet architecture achieved the highest SI among Inception, ResNet, Xception, and MobileNet networks. Fine-tuning the Inception-ResNet model led to an accuracy of 98% on the test dataset, which is the highest score in the literature. Therefore, from the proposed approach, a lightweight version of this model with fewer layers but almost the same accuracy is produced and examined. In the final stage, a novel metric, called Feature-Based Confidence (FBC), is devised for estimating the confidence of models in prediction. The proposed confidence measure is able to profoundly differentiate models with similar accuracy and determine the superior one. Based on the metrics results, the Inception-ResNet model is about 2x slower but 5% more confident than its lightweight version. Putting all together, by addressing the real-time application concerns, a Deep Learning based method is offered to qualify the hand rubbing process. The model is also employed in a commercial machine, called DeepHARTS, to estimate the quality of the hand rubbing procedure in different organizations and healthcare environments.
手部卫生在医疗环境中起着至关重要的作用,它可以阻止感染和疾病的传播。它也被认为是控制新冠病毒传播的第二有效方法。世界卫生组织(WHO)推荐了一个基于酒精擦手的12步指南。遵守该指南对于彻底清洁双手至关重要。因此,自动化系统有助于提高这个过程的质量。在本研究中,作为构建可靠手部卫生系统的第一阶段,收集了一个包含真实和虚假擦手动作的大规模多样化数据集。在下一阶段,使用快速版分离指数(SI)方法对各种预训练网络进行了分析和比较。所提出的快速SI方法有助于在不使用整个数据集进行微调的情况下选择最佳预训练网络。相应地,Inception-ResNet架构在Inception、ResNet、Xception和MobileNet网络中实现了最高的SI。对Inception-ResNet模型进行微调后,在测试数据集上的准确率达到了98%,这是文献中的最高分。因此,从所提出的方法中,生成并检验了该模型的一个层数更少但准确率几乎相同的轻量级版本。在最后阶段,设计了一种名为基于特征的置信度(FBC)的新指标,用于估计模型预测的置信度。所提出的置信度度量能够深刻地区分准确率相似的模型,并确定更优的模型。根据指标结果,Inception-ResNet模型比其轻量级版本慢约2倍,但置信度高5%。综上所述,通过解决实时应用问题,提供了一种基于深度学习的方法来评估擦手过程。该模型还被应用于一款名为DeepHARTS的商业机器中,以估计不同组织和医疗环境中擦手程序的质量。