基于可见性图特征和机器学习算法的人类活动识别

Huda Jalil Ibrahim, Methaq Taleb Kata, Atheer Y. Oudah
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引用次数: 0

摘要

人类活动是指人类的行动和行为。这些活动可以是体力活动,比如工作、运动或运动;或精神上的,如学习、解决问题或决策。技术的发展和手机、智能手表等移动设备的出现,以及可穿戴传感器的出现,导致了许多识别和分类人类活动的系统的出现。这些系统是根据这些设备收集的数据开发的,这些数据来自于自愿做一些活动的人,比如下楼、上楼、坐着、跑步、站立等等。利用WISDM(无线传感器数据挖掘)数据集,提出了一种新的机器学习模型来识别六种不同的人类活动:步行、慢跑、上楼、下楼、坐着和站着。对于信号分割,使用滑动窗口技术,以及两种可见性图技术进行特征提取:平均度和Jaccard系数。使用最小二乘支持向量机(LS-SVM)对这些活动进行分类,该模型的准确率达到94%,表明该模型具有较高的分类率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human activity recognition using visibility graph features coupled with machine learning algorithm
Human activities refer to the actions and behaviors of human beings. These activities can be physical, such as working, playing sports, or playing sports; or mentally, such as learning, problem-solving, or decision-making. Technical development and the emergence of mobile devices such as phones and smart watches, as well as wearable sensors, led to the emergence of many systems to recognize and classify human activities. These systems were developed using the data collected by these devices from a variety of individuals who volunteered to do several activities, such as downstairs, upstairs, sitting, running, standing, and more. Using the WISDM (Wireless Sensor Data Mining) dataset, a new machine learning model is proposed to recognize six different human activities: walking, jogging, going up stairs, going down stairs, sitting, and standing. For signal segmentation, the sliding window technique was used, along with two visibility graph techniques for feature extraction: mean degree and Jaccard coefficient. The Least-Squares Support Vector Machines (LS-SVM) used to classify these activities This model achieves 94% accuracy, demonstrating that the proposed model has a high classification rate.
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