A pragmatic signal processing approach for nurse care activity recognition using classical machine learning

Md. Ahasan Atick Faisal, Md. Sadman Siraj, Md. Tahmeed Abdullah, Omar Shahid, Farhan Fuad Abir, Md Atiqur Rahman Ahad
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引用次数: 5

Abstract

Nursing activity recognition adds a new dimension to the healthcare automation system. But nursing activity recognition is very challenging than identifying simple human activities like walking, cycling, swimming, etc. due to intra-class variability between activities. Besides, the lack of proper dataset does not allow researchers to develop a generalized method for nursing activity or comparing baseline methods on different datasets. Nurse Care Activity Recognition Challenge 2020 provides a dataset of twelve nursing activities. In this paper, we have described our (Team Hex Code) approach where we have emphasized on developing method, which can cope up with real-world data with noise and uncertainty. In our method, we have resampled our data to deal with a variable sample frequency of dataset and we have also applied feature selection method on the extracted feature to have the best combination of feature set for classification. We have used random forest classifier which is a classical machine learning algorithm. Applying our methodology, we have got 78% validation accuracy on the dataset. We have trained our model on the lab dataset and validate them on the field dataset.
一个实用的信号处理方法护理活动识别使用经典机器学习
护理活动识别为医疗保健自动化系统增加了一个新的维度。但是,由于活动之间的班级内可变性,护理活动识别比识别简单的人类活动(如步行、骑自行车、游泳等)更具挑战性。此外,缺乏适当的数据集不允许研究人员开发护理活动的通用方法或比较不同数据集上的基线方法。护士护理活动识别挑战2020提供了12项护理活动的数据集。在本文中,我们描述了我们的(Team Hex Code)方法,我们强调了开发方法,该方法可以处理具有噪声和不确定性的现实世界数据。在我们的方法中,我们对数据进行重新采样以处理数据集的可变采样频率,并且我们还对提取的特征应用了特征选择方法,以获得最佳的特征集组合进行分类。我们使用了经典的机器学习算法——随机森林分类器。应用我们的方法,我们在数据集上获得了78%的验证准确率。我们在实验室数据集上训练了我们的模型,并在现场数据集上验证了它们。
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