Hand hygiene is crucial for preventing viruses and infections. Due to the pervasive outbreak of COVID-19, wearing a mask and hand hygiene appear to be the most effective ways for the public to curb the spread of these viruses. The World Health Organization (WHO) recommends a guideline for alcohol-based hand rub in eight steps to ensure that all surfaces of hands are entirely clean. As these steps involve complex gestures, human assessment of them lacks enough accuracy. However, Deep Neural Network (DNN) and machine vision have made it possible to accurately evaluate hand rubbing quality for the purposes of training and feedback. In this paper, an automated deep learning based hand rub assessment system with real-time feedback is presented. The system evaluates the compliance with the 8-step guideline using a DNN architecture trained on a dataset of videos collected from volunteers with various skin tones and hand characteristics following the hand rubbing guideline. Various DNN architectures were tested, and an Inception-ResNet model led to the best results with 97% test accuracy. In the proposed system, an NVIDIA Jetson AGX Xavier embedded board runs the software. The efficacy of the system is evaluated in a concrete situation of being used by various users, and challenging steps are identified. In this experiment, the average time taken by the hand rubbing steps among volunteers is 27.2 seconds, which conforms to the WHO guidelines.
翻译:由于COVID-19的流行,戴面罩和手卫生似乎是公众遏制这些病毒传播的最有效途径。世界卫生组织(世卫组织)建议了八步中的酒精手按摩准则,以确保手的所有表面完全干净。由于这些步骤涉及复杂的手势,人类对其的评估不够准确。然而,深神经网络和机视使得能够准确评估手摩擦质量,以便进行培训和反馈。本文介绍了一个自动深层学习的手按摩评估系统,并提供了实时反馈。该系统利用一个DNNS结构评估8步指导方针的遵守情况,该结构是用在手摩擦准则之后从有不同皮肤和手特征的志愿者那里收集的录像数据集来进行训练的。对各种DNNE结构进行了测试,并采用了感知-ResNet模型,从而得出了97%测试准确性的最佳结果。在拟议的系统中,一个具有实时反馈的NVIDIA Jetson AGXavier嵌入板系统运行了软件。该系统的效能由不同步骤的用户加以评估。这个系统正在使用一个具有挑战性步骤的系统,由不同步骤加以评估。在不同的实验过程中,用不同的步骤加以评估。