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首页> 外文期刊>Sensors >Performance Evaluation of State of the Art Systems for Physical Activity Classification of Older Subjects Using Inertial Sensors in a Real Life Scenario: A Benchmark Study
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Performance Evaluation of State of the Art Systems for Physical Activity Classification of Older Subjects Using Inertial Sensors in a Real Life Scenario: A Benchmark Study

机译:在现实生活中使用惯性传感器对老年人进行体育活动分类的最新系统的性能评估:基准研究

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The popularity of using wearable inertial sensors for physical activity classification has dramatically increased in the last decade due to their versatility, low form factor, and low power requirements. Consequently, various systems have been developed to automatically classify daily life activities. However, the scope and implementation of such systems is limited to laboratory-based investigations. Furthermore, these systems are not directly comparable, due to the large diversity in their design (e.g., number of sensors, placement of sensors, data collection environments, data processing techniques, features set, classifiers, cross-validation methods). Hence, the aim of this study is to propose a fair and unbiased benchmark for the field-based validation of three existing systems, highlighting the gap between laboratory and real-life conditions. For this purpose, three representative state-of-the-art systems are chosen and implemented to classify the physical activities of twenty older subjects (76.4 ± 5.6 years). The performance in classifying four basic activities of daily life (sitting, standing, walking, and lying) is analyzed in controlled and free living conditions. To observe the performance of laboratory-based systems in field-based conditions, we trained the activity classification systems using data recorded in a laboratory environment and tested them in real-life conditions in the field. The findings show that the performance of all systems trained with data in the laboratory setting highly deteriorates when tested in real-life conditions, thus highlighting the need to train and test the classification systems in the real-life setting. Moreover, we tested the sensitivity of chosen systems to window size (from 1 s to 10 s) suggesting that overall accuracy decreases with increasing window size. Finally, to evaluate the impact of the number of sensors on the performance, chosen systems are modified considering only the sensing unit worn at the lower back. The results, similarly to the multi-sensor setup, indicate substantial degradation of the performance when laboratory-trained systems are tested in the real-life setting. This degradation is higher than in the multi-sensor setup. Still, the performance provided by the single-sensor approach, when trained and tested with real data, can be acceptable (with an accuracy above 80%).
机译:在过去的十年中,由于可穿戴式惯性传感器的多功能性,低外形尺寸和低功耗要求,使用可穿戴惯性传感器进行体育活动分类的流行已大大增加。因此,已经开发出各种系统来自动分类日常生活活动。但是,此类系统的范围和实施仅限于基于实验室的调查。此外,由于其设计的多样性(例如,传感器的数量,传感器的放置,数据收集环境,数据处理技术,特征集,分类器,交叉验证方法),这些系统不能直接进行比较。因此,本研究的目的是为三个现有系统的现场验证提出一个公平,公正的基准,强调实验室条件与实际条件之间的差距。为此,选择并实施了三个具有代表性的最新系统,以对二十个年龄较大的受试者(76.4±5.6岁)的身体活动进行分类。在受控和自由的生活条件下,对分类四种基本活动(坐,站,走和躺)的表现进行了分析。为了观察基于实验室的系统在野外条件下的性能,我们使用实验室环境中记录的数据训练了活动分类系统,并在现场的实际条件下对其进行了测试。研究结果表明,在实际环境中进行测试时,在实验室环境中接受数据训练的所有系统的性能都将大大降低,从而突出显示了在实际环境中训练和测试分类系统的需求。此外,我们测试了所选系统对窗口大小的敏感度(从1 s到10 s),表明总体精度随窗口大小的增加而降低。最后,为了评估传感器数量对性能的影响,仅考虑下腰部佩戴的传感单元对所选系统进行了修改。与多传感器设置类似,结果表明,在真实环境中测试经过实验室训练的系统时,性能会大大降低。该降级高于多传感器设置中的降级。尽管如此,单传感器方法提供的性能在经过实际数据训练和测试时仍可以接受(精度超过80%)。

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