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A hybrid classification approach to improving location accuracy in a Bluetooth-based room localisation system

机译:在基于蓝牙的房间定位系统中提高定位精度的混合分类方法

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It has been well recognised that the use of localisation techniques in home environment are beneficial to the development of health monitoring and activity recognition systems. The Bluetooth devices, as a kind of effective sensor with remarkable characteristics such as low cost, have been widely used in our daily life. Research has been carried out to integrate cellular network signal measurements and Bluetooth link measurements in developing home localisation systems. This paper presents a hybrid classification approach, based on the combination of Bayesian statistics and supported vector machines, to supporting the development of the Bluetooth-based room localisation system. The proposed approach considers the dependency between features and non-linear overlapping of features between rooms. The results show that the prediction accuracy has been improved in comparison to the traditional Naive Bayes classifier and the hidden Markov model used in previous studies.
机译:众所周知,在家庭环境中使用本地化技术有利于健康监测和活动识别系统的开发。蓝牙设备作为一种具有低成本等显着特点的有效传感器,已经在我们的日常生活中得到广泛使用。已经进行了研究以将蜂窝网络信号测量和蓝牙链路测量集成到正在开发的家庭定位系统中。本文提出了一种基于贝叶斯统计和支持向量机相结合的混合分类方法,以支持基于蓝牙的房间定位系统的开发。所提出的方法考虑了特征之间的依赖性以及房间之间特征的非线性重叠。结果表明,与传统的朴素贝叶斯分类器和先前研究中使用的隐马尔可夫模型相比,预测精度有所提高。

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