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Improving Recognition of Overlapping Activities with Less Interclass Variations in Smart Homes through Clustering-Based Classification

机译:通过基于聚类的分类,提高对智能家居中重叠活动的识别,减少类间差异

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摘要

The systems of sensing technology along with machine learning techniques provide a robust solution in a smart home due to which health monitoring, elderly care, and independent living take advantage. This study addresses the overlapping problem in activities performed by the smart home resident and improves the recognition performance of overlapping activities. The overlapping problem occurs due to less interclass variations (i.e., similar sensors used in more than one activity and the same location of performed activities). The proposed approach overlapping activity recognition using cluster-based classification (OAR-CbC) that makes a generic model for this problem is to use a soft partitioning technique to separate the homogeneous activities from nonhomogeneous activities on a coarse-grained level. Then, the activities within each cluster are balanced and the classifier is trained to correctly recognize the activities within each cluster independently on a fine-grained level. We examine four partitioning and classification techniques with the same hierarchy for a fair comparison. The OAR-CbC evaluates on smart home datasets Aruba and Milan using threefold and leave-one-day-out cross-validation. We used evaluation metrics: precision, recall, F score, accuracy, and confusion matrices to ensure the model's reliability. The OAR-CbC shows promising results on both datasets, notably boosting the recognition rate of all overlapping activities more than the state-of-the-art studies.
机译:传感技术系统以及机器学习技术为智能家居提供了强大的解决方案,因此可以利用健康监测、老年人护理和独立生活。本研究解决了智能家居居民活动重叠问题,提高了对重叠活动的识别性能。重叠问题是由于类间差异较少(即,在多个活动中使用的相似传感器和执行活动的相同位置)而发生的。使用基于聚类的分类(OAR-CbC)进行重叠活动识别的方法,为该问题建立了一个通用模型,即使用软分区技术在粗粒度水平上将同质活动与非同质活动分开。然后,平衡每个集群中的活动,并训练分类器在细粒度级别上独立正确识别每个集群中的活动。我们研究了具有相同层次结构的四种分区和分类技术,以便进行公平的比较。OAR-CbC 使用三重和一天的交叉验证对智能家居数据集 Aruba 和 Milan 进行评估。我们使用评估指标:精确率、召回率、F 分数、准确性和混淆矩阵来确保模型的可靠性。OAR-CbC在这两个数据集上都显示出有希望的结果,特别是比最先进的研究更能提高所有重叠活动的识别率。

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