Adaptive window based fall detection using anomaly identification in fog computing scenario

IF 0.6 Q4 COMPUTER SCIENCE, THEORY & METHODS Multiagent and Grid Systems Pub Date : 2021-01-01 DOI:10.3233/MGS-210341
Rashmi Shrivastava, Manju Pandey
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引用次数: 0

Abstract

Human fall detection is a subcategory of ambient assisted living. Falls are dangerous for old aged people especially those who are unaccompanied. Detection of falls as early as possible along with high accuracy is indispensable to save the person otherwise it may lead to physical disability even death also. The proposed fall detection system is implemented in the edge computing scenario. An adaptive window-based approach is proposed here for feature extraction because window size affects the performance of the classifier. For training and testing purposes two public datasets and our collected dataset have been used. Anomaly identification based on a support vector machine with an enhanced chi-square kernel is used here for the classification of Activities of Daily Living (ADL) and fall activities. Using the proposed approach 100% sensitivity and 98.08% specificity have been achieved which are better when compared with three recent research based on unsupervised learning. One of the important aspects of this study is that it is also validated on actual real fall data and got 100% accuracy. This complete fall detection model is implemented in the fog computing scenario. The proposed approach of adaptive window based feature extraction is better than static window based approaches and three recent fall detection methods.
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雾计算场景下基于自适应窗口的异常识别跌倒检测
人体跌倒检测是环境辅助生活的一个子类。跌倒对老年人来说是危险的,尤其是那些无人陪伴的老年人。尽早、准确地发现跌倒对于挽救生命至关重要,否则可能导致身体残疾甚至死亡。提出的跌落检测系统在边缘计算场景下实现。由于窗口大小影响分类器的性能,本文提出了一种基于窗口的自适应特征提取方法。为了训练和测试的目的,使用了两个公共数据集和我们收集的数据集。本文将基于增强卡方核支持向量机的异常识别用于日常生活活动(ADL)和跌倒活动的分类。该方法的灵敏度为100%,特异度为98.08%,与近年来的三种基于无监督学习的方法相比有明显提高。本研究的一个重要方面是,它也在实际的真实秋季数据上进行了验证,并且准确率达到了100%。完整的跌落检测模型在雾计算场景中实现。本文提出的基于自适应窗口的特征提取方法优于基于静态窗口的方法和最近的三种跌落检测方法。
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来源期刊
Multiagent and Grid Systems
Multiagent and Grid Systems COMPUTER SCIENCE, THEORY & METHODS-
CiteScore
1.50
自引率
0.00%
发文量
13
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