Scuola Superiore Sant' Anna, Piazza dei Martiri della Libertà 33, Pisa 56125, Italy.
Comput Intell Neurosci. 2011;2011:647858. doi: 10.1155/2011/647858. Epub 2011 Sep 4.
Accelerometers are a popular choice as body-motion sensors: the reason is partly in their capability of extracting information that is useful for automatically inferring the physical activity in which the human subject is involved, beside their role in feeding biomechanical parameters estimators. Automatic classification of human physical activities is highly attractive for pervasive computing systems, whereas contextual awareness may ease the human-machine interaction, and in biomedicine, whereas wearable sensor systems are proposed for long-term monitoring. This paper is concerned with the machine learning algorithms needed to perform the classification task. Hidden Markov Model (HMM) classifiers are studied by contrasting them with Gaussian Mixture Model (GMM) classifiers. HMMs incorporate the statistical information available on movement dynamics into the classification process, without discarding the time history of previous outcomes as GMMs do. An example of the benefits of the obtained statistical leverage is illustrated and discussed by analyzing two datasets of accelerometer time series.
其原因部分在于它们能够提取对自动推断人类参与的体育活动有用的信息,此外还在于它们在为生物力学参数估计器提供数据方面的作用。人体体育活动的自动分类对于普及计算系统极具吸引力,因为情境感知可以简化人机交互,而在生物医学领域,可穿戴传感器系统则被用于长期监测。本文关注执行分类任务所需的机器学习算法。通过将隐马尔可夫模型 (HMM) 分类器与高斯混合模型 (GMM) 分类器进行对比,对其进行了研究。HMM 将运动动力学方面的统计信息纳入分类过程,而不像 GMM 那样丢弃先前结果的时间历史。通过分析两个加速度计时间序列数据集,举例说明了并讨论了获得的统计优势的好处。