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一种强大的多模态检测系统:长期护理环境中的体育锻炼监测。

A robust multimodal detection system: physical exercise monitoring in long-term care environments.

作者信息

Al Mudawi Naif, Batool Mouazma, Alazeb Abdulwahab, Alqahtani Yahay, Almujally Nouf Abdullah, Algarni Asaad, Jalal Ahmad, Liu Hui

机构信息

Department of Computer Science, College of Computer Science and Information System, Najran University, Najran, Saudi Arabia.

Department of Computer Science, Air University, Islamabad, Pakistan.

出版信息

Front Bioeng Biotechnol. 2024 Aug 8;12:1398291. doi: 10.3389/fbioe.2024.1398291. eCollection 2024.

DOI:10.3389/fbioe.2024.1398291
PMID:39175622
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11338868/
Abstract

INTRODUCTION

Falls are a major cause of accidents that can lead to serious injuries, especially among geriatric populations worldwide. Ensuring constant supervision in hospitals or smart environments while maintaining comfort and privacy is practically impossible. Therefore, fall detection has become a significant area of research, particularly with the use of multimodal sensors. The lack of efficient techniques for automatic fall detection hampers the creation of effective preventative tools capable of identifying falls during physical exercise in long-term care environments. The primary goal of this article is to examine the benefits of using multimodal sensors to enhance the precision of fall detection systems.

METHODS

The proposed paper combines time-frequency features of inertial sensors with skeleton-based modeling of depth sensors to extract features. These multimodal sensors are then integrated using a fusion technique. Optimization and a modified K-Ary classifier are subsequently applied to the resultant fused data.

RESULTS

The suggested model achieved an accuracy of 97.97% on the UP-Fall Detection dataset and 97.89% on the UR-Fall Detection dataset.

DISCUSSION

This indicates that the proposed model outperforms state-of-the-art classification results. Additionally, the proposed model can be utilized as an IoT-based solution, effectively promoting the development of tools to prevent fall-related injuries.

摘要

引言

跌倒事故是导致严重伤害的主要原因,在全球老年人群体中尤为如此。在医院或智能环境中既要确保持续监控,又要保持舒适和隐私,这实际上是不可能的。因此,跌倒检测已成为一个重要的研究领域,特别是在使用多模态传感器方面。缺乏高效的自动跌倒检测技术阻碍了能够在长期护理环境中的体育锻炼期间识别跌倒的有效预防工具的创建。本文的主要目标是研究使用多模态传感器提高跌倒检测系统精度的益处。

方法

本文将惯性传感器的时频特征与深度传感器的基于骨架的建模相结合以提取特征。然后使用融合技术对这些多模态传感器进行集成。随后对所得融合数据应用优化和改进的K元分类器。

结果

所建议的模型在UP-Fall Detection数据集上的准确率达到97.97%,在UR-Fall Detection数据集上的准确率达到97.89%。

讨论

这表明所建议的模型优于当前的分类结果。此外,所建议的模型可以用作基于物联网的解决方案,有效地促进预防跌倒相关伤害工具的开发。

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