基于智能手机传感器数据的人类活动识别机器学习建模

H. Rashid, Khan Rabia, Kumar Tyagi Rajesh
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引用次数: 0

摘要

智能手机传感器产生高维特征向量,可以用来识别不同的人类活动。然而,每个载体在识别过程中的贡献是不同的,随着时间的推移,已经研究了几种策略,以制定一种产生有利结果的程序。本文介绍了用于人类活动分类的最新机器学习算法,包括数据采集、数据预处理、数据分割、特征选择和数据集分类为训练集和测试集。通过对不同方案的优缺点进行比较和深入分析。结果表明,支持向量机(SVM)算法的准确率达到95%。
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Machine learning modelling based on smartphone sensor data of human activity recognition
Smartphone sensors produce high-dimensional feature vectors that can be utilized to recognize different human activities. However, the contribution of each vector in the identification process is different, and several strategies have been examined over time to develop a procedure that yields favorable results. This paper presents the latest Machine Learning algorithms proposed for human activity classification, which include data acquisition, data preprocessing, data segmentation, feature selection, and dataset classification into training and testing sets. The solutions are compared and thoroughly analyzed by highlighting the respective advantages and disadvantages. The results show that the Support Vector Machine (SVM) algorithm achieved an accuracy rate of 95%.
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