A Novel Outdoor Positioning Technique Using LTE Network Fingerprints

Author:

Li Da,Lei Yingke,Zhang Haichuan

Abstract

In recent years, wireless-based fingerprint positioning has attracted increasing research attention owing to its position-related features and applications in the Internet of Things (IoT). In this paper, by leveraging long-term evolution (LTE) signals, a novel deep-learning-based fingerprint positioning approach is proposed to solve the problem of outdoor positioning. Considering the outstanding performance of deep learning in image classification, LTE signal measurements are converted into location grayscale images to form a fingerprint database. In order to deal with the instability of LTE signals, prevent the gradient dispersion problem, and increase the robustness of the proposed deep neural network (DNN), the following methods are adopted: First, cross-entropy is used as the loss function of the DNN. Second, the learning rate of the proposed DNN is dynamically adjusted. Third, this paper adopted several data enhancement techniques. To find the best positioning fingerprint and method, three types of fingerprint and five positioning models are compared. Finally, by using a deep residual network (Resnet) and transfer learning, a hierarchical structure training method is proposed. The proposed Resnet is used to train with the united fingerprint image database to obtain a positioning model called a coarse localizer. By using the prior knowledge of the pretrained Resnet, feed-forward neural network (FFNN)-based transfer learning is used to train with the united fingerprint database to obtain a better positioning model, called a fine localizer. The experimental results convincingly show that the proposed DNN can automatically learn the location features of LTE signals and achieve satisfactory positioning accuracy in outdoor environments.

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

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1. Localization With Cellular Signal RSRP Fingerprint of Multiband and Multicell;IEEE Journal on Selected Areas in Communications;2024-09

2. Novel integrated matching algorithm using a deep learning algorithm for Wi-Fi fingerprint-positioning technique in the indoors-IoT era;PeerJ Computer Science;2023-05-31

3. Survey on ML Investment in UAV Based Cellular Network;2023 International Conference on Information Technology, Applied Mathematics and Statistics (ICITAMS);2023-03-20

4. Multifeature-Based Outdoor Fingerprint Localization With Accuracy Enhancement for Cellular Network;IEEE Transactions on Instrumentation and Measurement;2023

5. Accurate Long‐Term Evolution/Wi‐Fi hybrid positioning technology for emergency rescue;ETRI Journal;2022-12-12

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