通过机器学习对人类活动进行分类和比较

Tiandao Luo, Jingkai Zhang
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引用次数: 0

摘要

当前对人类活动识别与分类的研究已成为推动社会科学技术发展的重要组成部分。人类活动的识别与分类涉及竞技体育、刑侦等多个领域。随着微电子力学领域的不断发展,更准确的人类识别成为可能,可穿戴的多轴惯性传感器使我们能够直观地检测到所需的数据。本文对8个测试者的19个人类活动数据进行特征提取和归一化。通过机器学习模型:支持向量机(SVR)分类、XGBoost分类和逻辑回归,将数据分为训练集和测试集。实验重复10次,取平均值。然后对模型进行评分,通过将集成机器学习与传统机器学习进行比较,发现与传统机器学习相比,集成学习在准确性方面提高了5% - 29%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification and comparison of human activities by machine learning
: The current study of human activity recognition and classification has been an important part of promoting the development of science and technology in society. Human activity recognition and classification are in several fields, such as competitive sports, criminal investigation field, etc. As the field of micro-electromechanics continues to evolve, more accurate human recognition is becoming possible, with wearable multi-axis inertial sensors that allow us to visually detect the desired data. In this paper, the data of 19 human activities for 8 testers are feature extracted and normalized. The data are divided into training and test sets by machine learning models: support vector machine (SVR) classification, XGBoost classification, and logistic regression. The experiment was repeated 10 times to take the average value. The models were then scored, and by comparing integrated machine learning with traditional machine learning, it was found that integrated learning improved by 5%−29% in terms of accuracy compared to traditional machine learning.
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