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Ontology-based feature generation to improve accuracy of activity recognition in smart environments

机译:基于本体的特征生成,提高智能环境中活动识别的准确性

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In recent years, many techniques have been proposed for automatic recognition of Activities of Daily Living from smart home sensor data. However, classifiers usually use features created ad hoc. In this work, the use of ontologies is proposed for the fully automatic generation of these features. The process consists of converting the original dataset into an ontology and then combine all the concepts and relations in that ontology to obtain relevant class expressions. The high formalization of ontologies allows us to reduce the search space by discarding many meaningless expressions, such as contradictory or unsatisfiable expressions. The relevant class expressions are then used as features by the classifiers to build the classification model. To validate our proposal, we have used as reference the results obtained by four different classification algorithms that use the most commonly used features.
机译:近年来,已经提出了许多技术来自动识别来自智能家庭传感器数据的日常生活活动。 但是,分类器通常使用功能创建了ad hoc。 在这项工作中,提出了用于全自动生成这些功能的本体。 该过程包括将原始数据集转换为本体,然后将该本体中的所有概念和关系组合在一起以获取相关类表达式。 本体的高形式化使我们能够通过丢弃许多无意义的表达来减少搜索空间,例如矛盾或不可采取的表达。 然后将相关类表达式用作分类器的特征来构建分类模型。 为了验证我们的提议,我们用作参考由四种不同分类算法获得的结果,该算法使用最常用的功能。

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