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An efficient sensing approach using dynamic multi-sensor collaboration for activity recognition

机译:一种使用动态多传感器合作进行活动识别的有效感应方法

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摘要

This paper presents an efficient sensing approach for activity recognition using multi-sensor fusion. The main achievement of the approach is to accurately recognize the human activity with the minimum body sensor usage through the use of dynamic sensor collaboration. The Naïve Bayes Classifier is adopted as the classification engine due to not only its easy implementation but also the advantages for multi-sensor fusion. The sensor selection is based on the real-time assignment information value of each sensor node. The platform is composed of a base station and a number of sensor nodes. The base station is used to assign the real-time information value for each sensor node, and fuse the chosen sensor data.
机译:本文介绍了使用多传感器融合的活动识别的有效传感方法。 该方法的主要成果是通过使用动态传感器协作,准确地识别利用最小机体传感器的人类活动。 Naï ve Bayes分类器被用作分类发动机,因为它不仅是其简单的实现,而且是多传感器融合的优点。 传感器选择基于每个传感器节点的实时分配信息值。 该平台由基站和多个传感器节点组成。 基站用于为每个传感器节点分配实时信息值,并融合所选择的传感器数据。

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