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Ontology-Based Framework for the Automatic Recognition of Activities of Daily Living Using Class Expression Learning Techniques

机译:基于本体的框架,用于自动识别使用类表达学习技术的日常生活活动

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The miniaturization and price reduction of sensors have encouraged the proliferation of smart environments, in which multitudinous sensors detect and describe the activities carried out by inhabitants. In this context, the recognition of activities of daily living has represented one of the most developed research areas in recent years. Its objective is to determine what daily activity is developed by the inhabitants of a smart environment. In this field, many proposals have been presented in the literature, many of them being based on ad hoc ontologies to formalize logical rules, which hinders their reuse in other contexts. In this work, we propose the use of class expression learning (CEL), an ontology-based data mining technique, for the recognition of ADL. This technique is based on combining the entities in the ontology, trying to find the expressions that best describe those activities. As far as we know, it is the first time that this technique is applied to this problem. To evaluate the performance of CEL for the automatic recognition of activities, we have first developed a framework that is able to convert many of the available datasets to all the ontology models we have found in the literature for dealing with ADL. Two different CEL algorithms have been employed for the recognition of eighteen activities in two different datasets. Although all the available ontologies in the literature are focused on the description of the context of the activities, the results show that the sequence of the events produced by the sensors is more relevant for their automatic recognition, in general terms.
机译:传感器的小型化和降价鼓励了智能环境的激增,其中众多传感器检测并描述居民进行的活动。在这方面,对日常生活活动的认可代表了近年来最开发的研究领域之一。其目标是确定智能环境的居民开发的日常活动。在这一领域,在文献中呈现了许多提案,其中许多是基于临时本体的,以正式化逻辑规则,阻碍其在其他情况下的重用。在这项工作中,我们建议使用类表达学习(CEL),是基于本体的数据挖掘技术,用于识别ADL。该技术基于组合本体中的实体,试图找到最能描述这些活动的表达式。据我们所知,这是第一次将这种技术应用于此问题。为了评估CEL用于自动识别活动的性能,我们首先开发了一个能够将许多可用数据集转换为我们在文献中发现的所有本体模型的框架,以便处理ADL。两种不同的CEL算法已经用于识别两个不同的数据集中的十八个活动。虽然文献中的所有可用本体专注于活动的描述,但结果表明,传感器产生的事件序列通常与其自动识别更相关。

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