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Statistical learning theory for location fingerprinting in wireless LANs

机译:无线局域网中位置指纹的统计学习理论

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摘要

In this paper, techniques and algorithms developed in the framework of Statistical Learning Theory are applied to the problem of determining the location of a wireless device by measuring the signal strength values from a set of access points (location fingerprinting). Statistical Learning Theory provides a rich theoretical basis for the development of models starting from a set of examples. Signal strength measurement is part of the normal operating mode of wireless equipment, in particular Wi-Fi, so that no special-purpose hardware is required. The proposed techniques, based on the Support Vector Machine paradigm, have been implemented and compared, on the same data set, with other approaches considered in scientific literature. Tests performed in a real-world environment show that results are comparable, with the advantage of a low algorithmic complexity in the normal operating phase. Moreover, the algorithm is particularly suitable for classification, where it outperforms the other techniques.
机译:本文将在统计学习理论框架内开发的技术和算法应用于通过测量一组访问点的信号强度值(位置指纹)来确定无线设备的位置的问题。统计学习理论从一组示例开始为模型的开发提供了丰富的理论基础。信号强度测量是无线设备(特别是Wi-Fi)正常操作模式的一部分,因此不需要专用硬件。基于支持向量机范式的拟议技术已在同一数据集上实施,并与科学文献中考虑的其他方法进行了比较。在实际环境中进行的测试表明,结果可比,其优点是在正常操作阶段算法复杂度低。此外,该算法特别适用于分类,其性能优于其他技术。

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