Feature extraction for human activity recognition on streaming data

Nawel Yala, B. Fergani, A. Fleury
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引用次数: 45

Abstract

An online recognition system must analyze the changes in the sensing data and at any significant detection; it has to decide if there is a change in the activity performed by the person. Such a system can use the previous sensor readings for decision-making (decide which activity is performed), without the need to wait for future ones. This paper proposes an approach of human activity recognition on online sensor data. We present four methods used to extract features from the sequence of sensor events. Our experimental results on public smart home data show an improvement of effectiveness in classification accuracy.
基于流数据的人类活动识别特征提取
在线识别系统必须对传感数据的变化进行分析,并在任何重大检测中进行分析;它必须决定人员执行的活动是否发生了变化。这样的系统可以使用以前的传感器读数进行决策(决定执行哪个活动),而不需要等待未来的活动。提出了一种基于在线传感器数据的人体活动识别方法。我们提出了从传感器事件序列中提取特征的四种方法。我们在公共智能家居数据上的实验结果表明,分类精度的有效性得到了提高。
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