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An argumentation enabled decision making approach for Fall Activity Recognition in Social IoT based Ambient Assisted Living systems

机译:基于环境IOT的环境辅助生活系统中的秋季活动认可的反决策方法

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摘要

With the advancement in Information and Communication Technologies (ICTs), smart devices are becoming even more smart and intelligent with every passing day. Further, the evolution of speaking and hearing enabled devices in an IoT network is transforming the face of research in the Social IoT domain. However, the integration of argumentation enabled devices in Social IoT network has not been fully explored by researchers in the past. Therefore, this research work focuses on development of argument enabled Social IoT networks. In this paper, a fuzzy argument based classification scheme termed as Classification Enhanced with Fuzzy Argumentation (CleFAR) is proposed. The proposed scheme is deployed for classification of fall activities in fall prevention applications. A novel framework for fall prevention system using Fall Activity Recognition (FAR) is presented. The proposed system is designed for the purpose of fall activity recognition in smart home Ambient Assisted Living (AAL) systems. To experimentally evaluate the system's performance, a smart home AAL environment is simulated and the inhabitant's routine activity dataset is generated. The fall activities are simulated using wearable fall detection systems. The proposed scheme is trained and tested on generated datasets and its performance is compared with traditional classification algorithms such as Random Forest (RF), Support Vector Machines (SVM), Naive Bayes (NB), Decision Tree (DT) and Artificial Neural Networks (ANN) as well as existing argumentation based game theoretic Weighted Voting Scheme (WVS). Experimental results indicate that the proposed scheme outperforms the traditional classification schemes and WVS approach with prediction accuracy up to 91%. It turns out that the proposed approach achieves significant improvement over the existing schemes.
机译:随着信息和通信技术(ICT)的进步,智能设备与每次过去的一天变得更加聪明,聪明。此外,IOT网络中的讲话和听力设备的演变正在转换社会物联网域中的研究。但是,过去的研究人员尚未完全探索参数启用的论证设备的集成。因此,这项研究工作侧重于支持的社会物联网网络的发展。本文提出了一种基于模糊的基于论证的分类方案,被称为与模糊缩写(CLEFAR)增强的分类。拟议计划部署用于秋季预防申请的秋季活动分类。介绍了使用秋季活动识别(远)的防坠落系统的新框架。所提出的系统专为智能家庭环境辅助生活(AAL)系统中的秋季活动识别而设计。为了通过实验评估系统的性能,模拟智能家庭AAL环境,并生成居民的日常活动数据集。使用可佩戴坠落检测系统模拟秋季活动。拟议的方案在生成的数据集上培训并测试,其性能与传统的分类算法(如随机森林(RF),支持向量机(SVM),NAIVE Bayes(NB),决策树(DT)和人工神经网络)进行比较ANN)以及基于现有的基于论点的游戏理论加权投票方案(WVS)。实验结果表明,该方案优于传统的分类方案和WVS方法,预测精度高达91%。事实证明,该方法对现有方案进行了重大改进。

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