Hua Luchi, Zhuang Yuan, Yang Jun
National Application Specific Integrated Circuit Center, Southeast University, Nanjing, China.
State Key Laboratory of Information Engineering in Surveying, Mapping, and Remote Sensing, Wuhan University, Wuhan, China.
Front Neurorobot. 2023 Feb 10;17:1121623. doi: 10.3389/fnbot.2023.1121623. eCollection 2023.
Current wireless-inertial fusion positioning systems widely adopt empirical propagation models of wireless signals and filtering algorithms such as the Kalman filter or the particle filter. However, empirical models of system and noise usually have lower accuracy in a practical positioning scenario. The biases of predetermined parameters would enlarge the positioning error through layers of systems. Instead of dealing with empirical models, this paper proposes a fusion positioning system based on an end-to-end neural network, along with a transfer learning strategy for improving the performance of neural network models for samples with different distributions. Verified by Bluetooth-inertial positioning in a whole floor scenario, the mean positioning error of the fusion network was 0.506 m. The proposed transfer learning method improved the accuracy of the step length and rotation angle of different pedestrians by 53.3%, the Bluetooth positioning accuracy of various devices by 33.4%, and the average positioning error of the fusion system by 31.6%. The results showed that our proposed methods outperformed filter-based methods in challenging indoor environments.
当前的无线惯性融合定位系统广泛采用无线信号的经验传播模型以及诸如卡尔曼滤波器或粒子滤波器等滤波算法。然而,系统和噪声的经验模型在实际定位场景中通常具有较低的精度。预定参数的偏差会通过系统层放大定位误差。本文提出了一种基于端到端神经网络的融合定位系统,以及一种迁移学习策略,用于提高神经网络模型对不同分布样本的性能。通过在整层场景中的蓝牙惯性定位验证,融合网络的平均定位误差为0.506米。所提出的迁移学习方法将不同行人的步长和旋转角度的精度提高了53.3%,各种设备的蓝牙定位精度提高了33.4%,融合系统的平均定位误差降低了31.6%。结果表明,我们提出的方法在具有挑战性的室内环境中优于基于滤波器的方法。