使用改进型支持向量机对 Elederly 跌倒检测系统进行数学建模和统计分析

Q4 Mathematics
Et al. Manoj Kumar Tiwari
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引用次数: 0

摘要

本研究的重点是利用数学建模和机器学习技术的统计分析,对老年人跌倒检测的应用和效果进行早期检测,从而提高老年人的安全。老年人跌倒会导致严重后果,需要及时干预。这个创新的开源项目利用机器学习算法,分析来自加速度计、陀螺仪和磁力计等可穿戴传感器的传感器数据以及温度和湿度等环境数据,从而及时发现跌倒模式。该项目使用的数据集包含 14 个变量,包括年龄、性别、医疗指标等,收集对象和活动各不相同。测试阶段取得的结果突出了通过调整数据集完善模型的重要性。随着年龄的增长,身体、认知和感官功能都会下降,跌倒的风险也随之增加,这凸显了对跌倒检测和预防系统的需求。本研究回顾了基于机器学习的最新跌倒检测和预防系统,并根据各种参数对其进行了分析。它将支持向量机和可穿戴设备确定为常用工具,但强调需要在不同环境下进行更广泛的研究。论文还可视化了结合各种可穿戴设备的机器学习算法的性能指标,并概述了未来的研究方向,包括能效、传感器融合、情境感知和可穿戴设备设计,以推进老年人跌倒检测和预防工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mathematical Modeling and Statistical Analysis of Elederly Fall Detection System Using Improved Support Vector Machine
This research focuses on enhancing the safety of elderly individuals through early fall detection using  mathematical modelling and statistical analysis of machine learning techniques for the application and effectiveness of elderly fall detection. Falls among the elderly can lead to severe consequences, necessitating timely intervention. Leveraging machine learning algorithms, this innovative open-source project analyses sensor data from wearable sensors like accelerometers, gyroscopes, and magnetometers, along with environmental data such as temperature and humidity, to promptly identify fall patterns. The project uses a dataset containing 14 variables, including age, sex, medical indicators, and more, collected from diverse subjects and activities. The results obtained during the testing phase underscore the importance of refining the model through dataset adjustments. As the physical, cognitive, and sensory functions decline with age, the risk of falls increases, highlighting the need for fall detection and prevention systems. This research reviews the latest machine learning-based systems for fall detection and prevention, analyzing them based on various parameters. It identifies support vector machines and wearable devices as common tools, but emphasizes the need for broader studies in different contexts. The paper also visualizes the performance metrics of ML algorithms in conjunction with various wearables and outlines future research directions, including energy efficiency, sensor fusion, context awareness, and wearable design, to advance fall detection and prevention for the elderly.
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