基于模糊隶属函数的增强支持向量机智能跌倒检测

IF 0.7 4区 计算机科学 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING Journal of Universal Computer Science Pub Date : 2023-09-28 DOI:10.3897/jucs.91399
Mohammad Kchouri, Norharyati Harum, Hussein Hazimeh, Ali Obeid
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引用次数: 0

摘要

跌倒对残疾人来说是一个严重的问题,它可能导致严重的伤害和死亡。智能跌倒检测是一种依靠传感器和辅助设备的技术,旨在改善残疾人的生活质量和生活方式。到目前为止,最广泛使用的跌倒预测方法是从惯性测量单元(IMU)传感器收集数据。此外,他们使用阈值来识别基于人工经验或机器学习(ML)算法的跌倒。尽管如此,这些方法仍然需要广泛的分类和校准。本文提出了一种将模糊逻辑(FL)与支持向量机(SVM)相结合的跌倒检测方法。利用模糊隶属函数与输入数据集建立模糊隶属函数模型,得到中间输出。由于结合这两种算法不是一件容易的事情,我们利用支持向量机与一个由模糊隶属函数组成的核,从而建立一个新的模型,称为FSVM。此外,利用SVM的超平面作为分离平面,取代传统的阈值方法,在包含模拟跌倒活动、非跌倒活动和脚本式跌倒活动(包括志愿者使用我们设计的设备进行的跌倒活动和无脚本式跌倒活动)的综合数据集上检测跌倒活动。结果显示,未触发假阳性率,对ADL的特异性达到100%。对跌落函数的检测总体准确率达99.87%。此外,该方法的总体灵敏度达到100%,无假阴性率。实验结果表明,该方法可以有效地从多相跌落模型中提取特征进行学习。
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Smart Fall Detection by Enhanced SVM with Fuzzy Logic Membership Function
Falling is a critical issue for disabled people, and it leads to potentially serious injuries and death. Smart fall detection is a technology that depends on sensors and auxiliary devices that seek to improve the quality of life and enhance the lifestyle of disabled people. So far, the most widely used fall prediction methods collect data from inertial measurement unit (IMU) sensors. In addition, they use thresholds to identify falls based on artificial experiences or machine learning (ML) algorithms. Nonetheless, these approaches still require extensive classification and calibration. In this paper, we suggest a new technique to detect falls by combining Fuzzy Logic (FL) and Support Vector Machine (SVM). The FL model is built by using a fuzzy membership function along with the input dataset to obtain the intermediate output. Because combining these two algorithms is not an easy task, we leverage SVM with a kernel comprised of a fuzzy membership function and thus build a new model known as FSVM. Besides, the hyperplane of the SVM is used as the separating plane to replace the traditional threshold method for detecting falling Activities of Daily Living (ADLs) on a comprehensive dataset containing simulated falling ADLs, non-falling ADLs, and scripted ADLs, including falling ADLs and unscripted ADLs performed by volunteers with our designed device. The results show that no false-positive rate had been triggered, and 100% specificity was achieved for ADL. An overall accuracy of about 99.87% in detecting the fall function was obtained. Furthermore, the overall sensitivity of 100% with no false negative rate obtained was achieved by implementing the proposed method. The attained results validate that our introduced method can effectively learn from features extracted from a multiphase fall model. 
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来源期刊
Journal of Universal Computer Science
Journal of Universal Computer Science 工程技术-计算机:理论方法
CiteScore
2.70
自引率
0.00%
发文量
58
审稿时长
4-8 weeks
期刊介绍: J.UCS - The Journal of Universal Computer Science - is a high-quality electronic publication that deals with all aspects of computer science. J.UCS has been appearing monthly since 1995 and is thus one of the oldest electronic journals with uninterrupted publication since its foundation.
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