使用压力传感器的实时坐姿监测系统比较研究

Liang Zhao, Jingyu Yan, Aiguo Wang
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摘要

摘要 精确的坐姿识别在改善不正确坐姿和降低相关健康问题的风险方面发挥着至关重要的作用。然而,人类行为固有的复杂性给利用压力传感器开发实用坐姿监测系统带来了巨大挑战。为了便于使用特征、选择分类模型和评估坐姿识别器,本研究对基于压力传感器的坐姿监测进行了比较研究。具体来说,我们根据压力传感器的分布情况从传感器数据中提取判别特征,并探索这些特征的不同组合。然后,我们对五种常用的分类模型进行了评估,以建立一个稳健的坐姿识别器。最后,我们对收集到的数据集进行了广泛的比较实验,包括与主体相关、与主体无关和跨主体设置下的四种性能指标。结果表明,联合使用不同位置的传感器可获得更高的准确率,而随机森林的表现通常优于其他四种分类模型。令人惊讶的是,与依赖主体和不依赖主体的设置相比,跨主体设置的准确率大大降低,我们初步介绍了迁移学习技术的结果,以缓解这一问题。此外,我们还对随机森林进行了参数敏感性和时间成本分析,这表明随机森林适用于实际应用。
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A comparative study on real-time sitting posture monitoring systems using pressure sensors
Abstract Accurate sitting posture recognition plays a crucial role in improving improper postures and reducing the risk of associated health issues. The inherent complexity of human behavior, however, poses a great challenge to the development of a practical sitting posture monitoring system with pressure sensors. Towards facilitating the use of features, choice of classification models, and way of evaluating a sitting posture recognizer, in this study a comparative study on pressure-sensor-based sitting posture monitoring is conducted. Specifically, we extract discriminant features from the sensor data based on the distribution of pressure sensors and explore different combinations of these features. Then, five commonly used classification models are evaluated towards building a robust sitting posture recognizer. Finally, extensive comparative experiments concerning four performance metrics are conducted on the collected datasets in subject-dependent, subject-independent, and cross-subject settings. Results show that the joint use of sensors at different positions leads to higher accuracy and that random forest generally outperforms the other four classification models. Surprisingly, compared to the subject-dependent and subject-independent settings, cross-subject setting greatly suffers from degraded accuracy, where we preliminarily present the results of transfer learning techniques to mitigate this issue. In addition, we perform parameter sensitivity and time-cost analysis of random forest, which indicates its applicability to practical use.
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