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A Comparison Study of Classifier Algorithms for Cross-Person Physical Activity Recognition

机译:跨人身体活动识别分类器算法的比较研究

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Physical activity is widely known to be one of the key elements of a healthy life. The many benefits of physical activity described in the medical literature include weight loss and reductions in the risk factors for chronic diseases. With the recent advances in wearable devices, such as smartwatches or physical activity wristbands, motion tracking sensors are becoming pervasive, which has led to an impressive growth in the amount of physical activity data available and an increasing interest in recognizing which specific activity a user is performing. Moreover, big data and machine learning are now cross-fertilizing each other in an approach called “deep learning”, which consists of massive artificial neural networks able to detect complicated patterns from enormous amounts of input data to learn classification models. This work compares various state-of-the-art classification techniques for automatic cross-person activity recognition under different scenarios that vary widely in how much information is available for analysis. We have incorporated deep learning by using Google’s TensorFlow framework. The data used in this study were acquired from PAMAP2 (Physical Activity Monitoring in the Ageing Population), a publicly available dataset containing physical activity data. To perform cross-person prediction, we used the leave-one-subject-out (LOSO) cross-validation technique. When working with large training sets, the best classifiers obtain very high average accuracies (e.g., 96% using extra randomized trees). However, when the data volume is drastically reduced (where available data are only 0.001% of the continuous data), deep neural networks performed the best, achieving 60% in overall prediction accuracy. We found that even when working with only approximately 22.67% of the full dataset, we can statistically obtain the same results as when working with the full dataset. This finding enables the design of more energy-efficient devices and facilitates cold starts and big data processing of physical activity records.
机译:众所周知,体育锻炼是健康生活的关键要素之一。医学文献中描述的体育锻炼的许多好处包括体重减轻和慢性病危险因素的减少。随着诸如智能手表或体育锻炼腕带之类的可穿戴设备的最新发展,运动跟踪传感器变得无处不在,这导致可利用的体育锻炼数据量显着增长,并且对识别用户正在从事的特定活动的兴趣也越来越高表演。此外,大数据和机器学习现在正以一种称为“深度学习”的方法相互交叉应用,该方法由庞大的人工神经网络组成,能够从大量输入数据中检测复杂的模式以学习分类模型。这项工作比较了在不同情况下可自动进行跨人活动识别的各种最新分类技术,这些情况在可用于分析的信息量方面差异很大。我们已经使用Google的TensorFlow框架整合了深度学习。本研究中使用的数据来自PAMAP2(老龄人口的体育活动监测),PAMAP2是包含体育活动数据的公开可用数据集。为了进行跨人预测,我们使用了留一法(LOSO)交叉验证技术。当使用大型训练集时,最好的分类器会获得很高的平均准确度(例如,使用额外的随机树可达到96%)。但是,当数据量大大减少时(可用数据仅占连续数据的0.001%),深度神经网络的效果最佳,总体预测精度达到60%。我们发现,即使仅处理约22.67%的完整数据集,我们也可以从统计学上获得与使用完整数据集相同的结果。这一发现使设计更节能的设备成为可能,并促进了冷启动和体育锻炼记录的大数据处理。

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