Three-Dimensional Indoor Positioning Scheme for Drone with Fingerprint-Based Deep-Learning Classifier

IF 4.4 2区 地球科学 Q1 REMOTE SENSING Drones Pub Date : 2024-01-09 DOI:10.3390/drones8010015
Shuzhi Liu, Houjin Lu, Seung-Hoon Hwang
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Abstract

Unmanned aerial vehicles (UAVs) hold significant potential for various indoor applications, such as mapping, surveillance, navigation, and search and rescue operations. However, indoor positioning is a significant challenge for UAVs, owing to the lack of GPS signals and the complexity of indoor environments. Therefore, this study was aimed at developing a Wi-Fi-based three-dimensional (3D) indoor positioning scheme tailored to time-varying environments, involving human movement and uncertainties in the states of wireless devices. Specifically, we established an innovative 3D indoor positioning system to meet the localisation demands of UAVs in indoor environments. A 3D indoor positioning database was developed using a deep-learning classifier, enabling 3D indoor positioning through Wi-Fi technology. Additionally, through a pioneering integration of fingerprint recognition into wireless positioning technology, we enhanced the precision and reliability of indoor positioning through a detailed analysis and learning process of Wi-Fi signal features. Two test cases (Cases 1 and 2) were designed with positioning height intervals of 0.5 m and 0.8 m, respectively, corresponding to the height of the test scene for positioning simulation and testing. With an error margin of 4 m, the simulation accuracies for the (X, Y) dimension reached 94.08% (Case 1) and 94.95% (Case 2). When the error margin was 0 m, the highest simulation accuracies for the H dimension were 91.84% (Case 1) and 93.61% (Case 2). Moreover, 40 real-time positioning experiments were conducted in the (X, Y, H) dimension. In Case 1, the average positioning success rates were 50.8% (Margin-0), 72.9% (Margin-1), and 81.4% (Margin-2), and the corresponding values for Case 2 were 52.4%, 74.5%, and 82.8%, respectively. The results demonstrated that the proposed method can facilitate 3D indoor positioning based only on Wi-Fi technologies.
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基于指纹的深度学习分类器的无人机三维室内定位方案
无人驾驶飞行器(UAV)在各种室内应用(如测绘、监视、导航和搜救行动)中具有巨大潜力。然而,由于缺乏 GPS 信号和室内环境的复杂性,室内定位对无人飞行器来说是一项重大挑战。因此,本研究旨在开发一种基于 Wi-Fi 的三维(3D)室内定位方案,以适应时变环境,包括人类移动和无线设备状态的不确定性。具体来说,我们建立了一个创新的三维室内定位系统,以满足无人机在室内环境中的定位需求。我们利用深度学习分类器开发了三维室内定位数据库,通过Wi-Fi技术实现了三维室内定位。此外,我们还开创性地将指纹识别集成到无线定位技术中,通过对Wi-Fi信号特征的详细分析和学习过程,提高了室内定位的精度和可靠性。我们设计了两个测试案例(案例 1 和案例 2),定位高度间隔分别为 0.5 米和 0.8 米,与测试场景的高度相对应,用于定位模拟和测试。误差范围为 4 米时,(X、Y)维度的模拟精确度分别达到 94.08%(案例 1)和 94.95%(案例 2)。当误差范围为 0 米时,H 维度的最高模拟精确度为 91.84%(案例 1)和 93.61%(案例 2)。此外,还进行了 40 次(X、Y、H)维度的实时定位实验。在案例 1 中,平均定位成功率分别为 50.8%(Margin-0)、72.9%(Margin-1)和 81.4%(Margin-2),案例 2 的相应值分别为 52.4%、74.5% 和 82.8%。结果表明,建议的方法可以仅基于 Wi-Fi 技术促进 3D 室内定位。
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来源期刊
Drones
Drones Engineering-Aerospace Engineering
CiteScore
5.60
自引率
18.80%
发文量
331
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