CNN洗手动作分类:哪个更重要——方法还是数据集?

Atis Elsts, M. Ivanovs, R. Kadikis, O. Sabelnikovs
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引用次数: 1

摘要

良好的手部卫生是预防包括COVID-19在内的传染病的关键因素之一。机器学习的进步使自动手部卫生评估成为可能,研究论文报告了从视频数据中高度准确的洗手动作分类。然而,现有的研究通常使用在实验室条件下收集的数据集。在本文中,我们将最先进的技术,如基于MobileNetV2的CNN,包括两流和循环CNN,应用于三个不同的数据集:一个高质量和统一的实验室数据集,一个更多样化的实验室数据集,以及一个在医院收集的大规模真实数据集。结果表明,虽然许多方法在第一个数据集上显示出良好的准确性,但在更复杂的数据集上,准确性显着下降。此外,所有的方法都不能在第三个数据集上泛化,并且只在训练集的视频上显示出略好于随机的准确性。这表明,尽管研究文献中经常报道的准确度很高,但将洗手质量监测过渡到现实世界的应用并不简单。
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CNN for Hand Washing Movement Classification: What Matters More - the Approach or the Dataset?
Good hand hygiene is one of the key factors in preventing infectious diseases, including COVID-19. Advances in machine learning have enabled automated hand hygiene evaluation, with research papers reporting highly accurate hand washing movement classification from video data. However, existing studies typically use datasets collected in lab conditions. In this paper, we apply state-of-the-art techniques such as MobileNetV2 based CNN, including two-stream and recurrent CNN, to three different datasets: a good-quality and uniform lab-based dataset, a more diverse lab-based dataset, and a large-scale real-life dataset collected in a hospital. The results show that while many of the approaches show good accuracy on the first dataset, the accuracy drops significantly o n t he m ore complex datasets. Moreover, all approaches fail to generalize on the third dataset, and only show slightly-better-than random accuracy on videos held out from the training set. This suggests that despite the high accuracy routinely reported in the research literature, the transition to real-world applications for hand washing quality monitoring is not going to be straightforward.
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