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An Algorithmic Method of Calculating Neighborhood Radius for Clustering In-home Activities within Smart Home Environment

机译:计算邻域半径的​​算法方法,用于在智能家居环境中对家居活动进行聚类

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Activity clustering and recognition is one of the most important research trends about smart home. Taking place inside a sensor smart home, activities differ from each other at typical characteristics such as sensor sets triggered as well as temporal ones. In this work, we present a smart home infrastructure and propose a method of calculating neighborhood radius for clustering and recognizing in-home activities based on temporal characteristics. Experiment results show that the new method is proved to be easier and more flexible in finding neighborhood radius for clustering than the original DBSCAN algorithm and helps to generate several times as many smart contexts for activity recognition and next-activity forecast as the clustering results reported in Enamul Hoque et al 's research work.
机译:活动聚类和识别是关于智能家居的最重要的研究趋势之一。发生在传感器智能家居内部的活动在典型特征(例如触发的传感器集和临时的传感器集)上彼此不同。在这项工作中,我们提出了一种智能家居基础设施,并提出了一种计算邻域半径的​​方法,以基于时间特征对聚类和识别住宅活动进行聚类。实验结果表明,与原始的DBSCAN算法相比,该新方法在寻找邻域半径进行聚类时更容易,更灵活,并且可以帮助生成活动识别和下一个活动预测的智能上下文,是上次报告的聚类结果的几倍。 Enamul Hoque等人的研究工作。

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