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Online activity recognition and daily habit modeling for solitary elderly through indoor position-based stigmergy

机译:通过室内基于姿势的单身老年人在线活动识别和日常生活习惯建模

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摘要

This paper concerns the issue of monitoring elderly behavior in the context of ambient assisted living (AAL). Under the framework of online daily habit modeling (ODHM), we employ the emergent representation for activities of daily living (ADLs) with position-based stigmergy, and then combine it with convolution neural networks (CNNs) to accomplish the tasks of recognizing ADLs. In addition, we propose a new paradigm of activity summarization with the robustness to break interruptions. Radio tomographic imaging (RTI) is promoted as a simple yet flexible way of facilitating the required position-based stigmergy. Such position-based AAL systems can benefit the advantages of having no need any sophisticated domain models in analyzing and understanding ADLs while no burden training is involved in ODHM. Moreover, the emergent based data aggregation and deep learning of CNN together allow the recognition of ADLs at a fine-grained level, which contributes to the performance improvement of ODHM. Experimental results demonstrate the effectiveness of the proposed approach.
机译:本文涉及在环境辅助生活(AAL)的背景下监测老年人行为的问题。在在线日常习惯建模(ODHM)的框架下,我们采用基于位置的Stigmergy来表示日常生活活动(ADL)的紧急情况,然后将其与卷积神经网络(CNN)结合以完成识别ADL的任务。此外,我们提出了一种新的活动总结范式,它具有打破中断的鲁棒性。无线电层析成像(RTI)促进了一种简单而灵活的方式,以简化所需的基于位置的图像散乱。这样的基于位置的AAL系统可以受益于以下优点:无需任何复杂的领域模型即可分析和理解ADL,而ODHM中不涉及负担训练。此外,基于紧急情况的数据聚合和CNN的深度学习共同允许对ADL进行细粒度的识别,这有助于提高ODHM的性能。实验结果证明了该方法的有效性。

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