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Event Classification Using Adaptive Cluster-Based Ensemble Learning of Streaming Sensor Data

机译:使用基于聚类的自适应传感器流学习的事件分类

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Sensor data stream mining methods have recently brought significant attention to smart homes research. Through the use of sliding windows on the streaming sensor data, activities can be recognized through the sensor events. However, it remains a challenge to attain real-time activity recognition from the online streaming sensor data. This paper proposes a new event classification method called Adaptive Cluster-Based Ensemble Learning of Streaming sensor data (ACBE-streaming). It contains desirable features such as adaptively windowing sensor events, detecting relevant sensor events using a time decay function, preserving past sensor information in its current window, and forming online clusters of streaming sensor data. The proposed approach improves the representation of streaming sensor-events, learns and recognizes activities in an on-line fashion. Experiments conducted using a real-world smart home dataset for activity recognition have achieved better results than the current approaches.
机译:传感器数据流挖掘方法最近引起了人们对智能家居研究的极大关注。通过在流式传感器数据上使用滑动窗口,可以通过传感器事件识别活动。然而,从在线流传感器数据获得实时活动识别仍然是一个挑战。本文提出了一种新的事件分类方法,称为流传感器数据的自适应基于聚类的集成学习(ACBE-streaming)。它包含理想的功能,例如自适应地对传感器事件进行窗口化,使用时间衰减功能检测相关的传感器事件,在其当前窗口中保留过去的传感器信息以及形成流式传感器数据的在线群集。所提出的方法改进了流传感器事件的表示,以在线方式学习和识别活动。使用现实世界的智能家居数据集进行活动识别的实验比当前方法取得了更好的结果。

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