Evaluation of Principal Component Analysis Algorithm for Locomotion Activities Detection in a Tiny Machine Learning Device

Ricardo Yauri, R. Acosta, Marco Jurado, Milton Rios
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引用次数: 2

Abstract

Data generated by human locomotion activities is a process that involves the analysis of hundreds or thousands of data in a reduced time, due to the very nature of the signals generated and the techniques for implementing classification models and event detection. It is advisable to try to reduce the number of characteristics or select the most important elements of the captured signals showing, in this paper, the use of principal component analysis (PCA) techniques. The use of machine learning techniques for reduced hardware devices in intelligent environments, allows generating a solution for the non-invasive supervision of activities, complementing the use of PCA with other classification algorithms suitable for the treatment of data with a high number of characteristics such as support vector machines (SVM). Therefore, the evaluation of PCA processes and SVM algorithms is shown, selecting the one that has the best performance during its implementation in IoT devices with low hardware resources. Finally, it is considered that the memory space consumed in the IoT device and the execution time of the processes are critical elements to make the comparison and contrast of the PCA models, allowing to select and develop a reliable and efficient model in small devices of IoT.
小型机器学习设备中运动活动检测主成分分析算法的评价
由于所产生的信号的性质以及实现分类模型和事件检测的技术,人类运动活动产生的数据是一个涉及在缩短的时间内分析数百或数千个数据的过程。在本文中,建议尝试减少特征的数量或选择捕获信号中最重要的元素,以显示主成分分析(PCA)技术的使用。将机器学习技术用于智能环境中的简化硬件设备,可以为活动的非侵入性监督生成解决方案,并将PCA与其他适合处理具有大量特征的数据的分类算法(如支持向量机(SVM))相补充。因此,本文展示了对PCA过程和SVM算法的评价,选择在硬件资源较少的物联网设备中实现时性能最好的一种算法。最后,考虑到物联网设备中消耗的内存空间和进程的执行时间是对PCA模型进行比较和对比的关键因素,从而可以在物联网小型设备中选择和开发可靠高效的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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