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Probabilistic ontology based activity recognition in smart homes using Markov Logic Network

机译:马尔可夫逻辑网络在智能家居中基于概率本体的活动识别

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Designing an activity recognition system that models various activities of an occupant is the fundamental task in creating a smart home. Activity Recognition (AR) modeling, has witnessed a comprehensive range of research, that focuses independently on probabilistic approaches and on ontology based models as well. The research presented in this paper introduces an innovative approach in AR system design that integrates probabilistic inference with the represented domain ontology. Data obtained from sensors are uncertain in nature and mapping uncertainty over ontology will not yield good accuracy in the context of AR. The proposed system augments ontology based activity recognition with probabilistic reasoning through Markov Logic Network (MLN) which is a statistical relational learning approach. The proposed system utilizes the model theoretic semantic property of description logic, to convert the represented ontology activity model to its corresponding first order rules. MLN is constructed by learning weighted first order rules that enable probabilistic reasoning within a knowledge representation framework. The experiments based on datasets obtained from smart home prototypes illustrate the effectiveness of integrating probabilistic reasoning over domain ontology and the result analysis shows enhanced recognition accuracy in comparison with existing approaches. (C) 2017 Elsevier B.V. All rights reserved.
机译:设计能够模拟乘员各种活动的活动识别系统是创建智能家居的基本任务。活动识别(Activity Recognition,AR)建模已经见证了广泛的研究范围,其研究重点独立于概率方法以及基于本体的模型。本文提出的研究介绍了AR系统设计中的一种创新方法,该方法将概率推理与所表示的领域本体相集成。从传感器获得的数据本质上是不确定的,并且在AR的上下文中,映射到本体上的不确定性将不会产生良好的准确性。所提出的系统通过概率统计通过马尔可夫逻辑网络(MLN)增强了基于本体的活动识别,这是一种统计关系学习方法。所提出的系统利用描述逻辑的模型理论语义特性,将表示的本体活动模型转换为对应的一阶规则。 MLN是通过学习加权一阶规则构建的,该规则可以在知识表示框架内进行概率推理。基于从智能家居原型获得的数据集的实验说明了将概率推理与领域本体集成在一起的有效性,结果分析表明与现有方法相比,识别精度得到了提高。 (C)2017 Elsevier B.V.保留所有权利。

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