An LSTM-based Indoor Positioning Method Using Wi-Fi Signals

Ayesha Sahar, Dongsoo Han
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引用次数: 38

Abstract

Recently, Wi-Fi fingerprints are often used for constructing indoor positioning systems. Wi-Fi fingerprint is a vector of Received Signal Strength (RSS) values at a particular location. Radio map is the collection of Wi-Fi fingerprints and their collected location at an area or a building. Positioning systems, mounted on top of the radio map, estimate locations using the information in the radio map. Many Wi-Fi fingerprint-based positioning algorithms have been developed. K-Nearest Neighbor(KNN), probabilistic method, fuzzy logic, neural network, multilayer perceptron are the examples. However, this field has not yet fully benefited from the potential of deep learning approaches. The sequence of Wi-Fi fingerprints implies that the deep recurrent network approaches, especially designed to handle sequential data, can play a vital role to enhance the performance of fingerprint-based positioning systems. In this paper, deep and recurrent approaches are studied rigorously for the improvement of the accuracy of positioning systems. We focus mainly on Long Short-Term Memory (LSTM) networks. An LSTM-based approach was compared with other state of the art approaches. A complete explanation to select the best hyper parameters is presented so that they can be referenced by the researchers in this field. A simple vanilla LSTM architecture is also compared with a stacked LSTM architecture on a Wi-Fi fingerprint dataset.
基于lstm的室内Wi-Fi定位方法
近年来,Wi-Fi指纹常用于构建室内定位系统。Wi-Fi指纹是特定位置的接收信号强度(RSS)值的矢量。无线地图是收集Wi-Fi指纹及其在某个区域或建筑物的位置。安装在无线电地图上的定位系统利用无线电地图上的信息来估计位置。许多基于Wi-Fi指纹的定位算法已经被开发出来。k -最近邻(KNN)、概率方法、模糊逻辑、神经网络、多层感知器是例子。然而,该领域尚未充分受益于深度学习方法的潜力。Wi-Fi指纹的序列性表明,深度循环网络方法对于提高基于指纹的定位系统的性能起着至关重要的作用,特别是针对序列数据的处理。为了提高定位系统的精度,本文对深度和循环方法进行了深入研究。我们主要关注长短期记忆(LSTM)网络。将基于lstm的方法与其他最先进的方法进行了比较。给出了最佳超参数选择的完整说明,供该领域的研究人员参考。在Wi-Fi指纹数据集上,将简单的vanilla LSTM架构与堆叠LSTM架构进行了比较。
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