Young children are at an increased risk of contracting contagious diseases such as COVID-19 due to improper hand hygiene. An autonomous social agent that observes children while handwashing and encourages good hand washing practices could provide an opportunity for handwashing behavior to become a habit. In this article, we present a human action recognition system, which is part of the vision system of a social robot platform, to assist children in developing a correct handwashing technique. A modified convolution neural network (CNN) architecture with Channel Spatial Attention Bilinear Pooling (CSAB) frame, with a VGG-16 architecture as the backbone is trained and validated on an augmented dataset. The modified architecture generalizes well with an accuracy of 90% for the WHO-prescribed handwashing steps even in an unseen environment. Our findings indicate that the approach can recognize even subtle hand movements in the video and can be used for gesture detection and classification in social robotics.
翻译:由于手卫生不当,幼儿感染COVID-19等传染性疾病的风险增加; 一个在洗手时观察儿童并鼓励良好的洗手习惯的自主社会代理人,可以提供洗手行为成为习惯的机会; 在文章中,我们提出了一个人类行动识别系统,这是社会机器人平台愿景系统的一部分,帮助儿童开发正确的洗手技术; 一个经过修改的神经网络结构,带有频道空间注意力双线集合框架,以VGG-16结构作为主干,在强化数据集上进行培训和验证; 修改后的结构在世卫组织规定的洗手步骤中,即使是在看不见的环境中,也以90%的精确度加以概括; 我们的研究结果表明,该方法甚至可以识别视频中的微妙手势移动,并可用于社会机器人的手势识别和分类。