使用可穿戴传感器进行人类活动识别和跌倒检测的元启发式算法应用:综合分析

IF 2.5 3区 心理学 Q2 PSYCHOLOGY, SOCIAL
Mohammed A A Al-Qaness, Ahmed M Helmi, Abdelghani Dahou, Mohamed Abd Elaziz
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引用次数: 0

摘要

本文研究了元启发式(MH)优化算法在人类活动识别(HAR)和基于传感器数据的跌倒检测中的应用。众所周知,元启发式算法已被用于复杂的工程和优化问题,包括特征选择(FS)。因此,本文使用九种 MH 算法作为 FS 方法,以提高 HAR 和跌倒检测应用的分类准确性。应用的 MH 算法包括 Aquila 优化器(AO)、算术优化算法(AOA)、海洋捕食者算法(MPA)、人工蜂群算法(ABC)、遗传算法(GA)、粘菌算法(SMA)、灰狼优化器(GWO)、鲸鱼优化算法(WOA)和粒子群优化算法(PSO)。首先,我们采用了高效的预取和分割方法来揭示运动模式并降低时间复杂性。其次,我们利用先进的深度学习方法开发了一种轻特征提取技术。所开发的模型为 ResRNN,由深度学习网络的多个构建模块组成,包括卷积神经网络(CNN)、残差网络和双向递归神经网络(BiRNN)。第三,我们采用了上述 MH 算法来选择最佳特征,提高分类准确率。最后,我们采用支持向量机和随机森林分类器,在多分类的情况下对每个活动进行分类,在二分类的情况下检测跌倒和非跌倒动作。在多分类情况下,我们使用了七个不同的复杂数据集:PAMMP2、Sis-Fall、UniMiB SHAR、OPPORTUNITY、WISDM、UCI-HAR 和 KU-HAR 数据集。此外,我们还使用 Sis-Fall 数据集进行二元分类(跌倒检测)。我们使用不同的性能指标比较了九种 MH 优化方法的结果。我们得出结论,MH 优化算法在 HAR 和跌倒检测应用中具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Applications of Metaheuristics for Human Activity Recognition and Fall Detection Using Wearable Sensors: A Comprehensive Analysis.

In this paper, we study the applications of metaheuristics (MH) optimization algorithms in human activity recognition (HAR) and fall detection based on sensor data. It is known that MH algorithms have been utilized in complex engineering and optimization problems, including feature selection (FS). Thus, in this regard, this paper used nine MH algorithms as FS methods to boost the classification accuracy of the HAR and fall detection applications. The applied MH were the Aquila optimizer (AO), arithmetic optimization algorithm (AOA), marine predators algorithm (MPA), artificial bee colony (ABC) algorithm, genetic algorithm (GA), slime mold algorithm (SMA), grey wolf optimizer (GWO), whale optimization algorithm (WOA), and particle swarm optimization algorithm (PSO). First, we applied efficient prepossessing and segmentation methods to reveal the motion patterns and reduce the time complexities. Second, we developed a light feature extraction technique using advanced deep learning approaches. The developed model was ResRNN and was composed of several building blocks from deep learning networks including convolution neural networks (CNN), residual networks, and bidirectional recurrent neural networks (BiRNN). Third, we applied the mentioned MH algorithms to select the optimal features and boost classification accuracy. Finally, the support vector machine and random forest classifiers were employed to classify each activity in the case of multi-classification and to detect fall and non-fall actions in the case of binary classification. We used seven different and complex datasets for the multi-classification case: the PAMMP2, Sis-Fall, UniMiB SHAR, OPPORTUNITY, WISDM, UCI-HAR, and KU-HAR datasets. In addition, we used the Sis-Fall dataset for the binary classification (fall detection). We compared the results of the nine MH optimization methods using different performance indicators. We concluded that MH optimization algorithms had promising performance in HAR and fall detection applications.

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来源期刊
CiteScore
4.50
自引率
12.50%
发文量
7
期刊介绍: Basic and Applied Social Psychology (BASP) emphasizes the publication of outstanding research articles, but also considers literature reviews, criticism, and methodological or theoretical statements spanning the entire range of social psychological issues. The journal will publish basic work in areas of social psychology that can be applied to societal problems, as well as direct application of social psychology to such problems. The journal provides a venue for a broad range of specialty areas, including research on legal and political issues, environmental influences on behavior, organizations, aging, medical and health-related outcomes, sexuality, education and learning, the effects of mass media, gender issues, and population problems.
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