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A Novel Multimodal Data Analytic Scheme for Human Activity Recognition

机译:一种用于人类活动识别的新型多峰数据分析方案

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In this article, we propose a novel multimodal data analytics scheme for human activity recognition. Traditional data analysis schemes for activity recognition using heterogeneous sensor network setups for eHealth application scenarios are usually a heuristic process, involving underlying domain knowledge. Relying on such explicit knowledge is problematic when aiming to create automatic, unsupervised or semi-supervised monitoring and tracking of different activities, and detection of abnormal events. Experiments on a publicly available OPPORTUNITY activity recognition database from UCI machine learning repository demonstrates the potential of our approach to address next generation unsupervised automatic classification and detection approaches for remote activity recognition for novel, eHealth application scenarios, such as monitoring and tracking of elderly, disabled and those with special needs.
机译:在本文中,我们提出了一种用于人类活动识别的新型多模式数据分析方案。使用针对eHealth应用场景的异构传感器网络设置进行活动识别的传统数据分析方案通常是一个启发式过程,涉及基础领域知识。当旨在创建自动,无监督或半监督的不同活动的监视和跟踪以及异常事件的检测时,依赖于这样的明确知识是有问题的。在UCI机器学习存储库中公开可用的机会活动识别数据库上进行的实验表明,我们的方法具有潜力,可解决下一代无监督自动分类和检测方法,用于新型eHealth应用场景的远程活动识别,例如对老年人,残障者的监视和跟踪以及那些有特殊需要的人。

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