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An Innovative Fingerprint Location Algorithm for Indoor Positioning Based on Array Pseudolite

机译:基于阵列伪卫星的室内定位创新指纹定位算法

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摘要

Since the signals of the global navigation satellite system (GNSS) are blocked by buildings, accurate positioning cannot be achieved in an indoor environment. Pseudolite can simulate similar outdoor satellite signals and can be used as a stable and reliable positioning signal source in indoor environments. Therefore, it has been proposed as a good substitute and has become a research hotspot in the field of indoor positioning. There are still some problems in the pseudolite positioning field, such as: Integer ambiguity of carrier phase, initial position determination, and low signal coverage. To avoid the limitation of these factors, an indoor positioning system based on fingerprint database matching of homologous array pseudolite is proposed in this paper, which can achieve higher positioning accuracy. The realization of this positioning system mainly includes the offline phase and the online phase. In the offline phase, the carrier phase data in the indoor environment is first collected, and a fingerprint database is established. Then a variational auto-encoding (VAE) network with location information is used to learn the probability distribution characteristics of the carrier phase difference of pseudolite in the latent space to realize feature clustering. Finally, the deep neural network is constructed by using the hidden features learned to further study the mapping relationship between different carrier phases of pseudolite and different indoor locations. In the online phase, the trained model and real-time carrier phases of pseudolite are used to predict the location of the positioning terminal. In this paper, by a large number of experiments, the performance of the pseudolite positioning system is evaluated under dynamic and static conditions. The effectiveness of the algorithm is evaluated by the comparison experiments, the experimental results show that the average positioning accuracy of the positioning system in a real indoor scene is 0.39 m, and the 95% positioning error is less than 0.85 m, which outperforms the traditional fingerprint positioning algorithms.
机译:由于全球导航卫星系统(GNSS)的信号被建筑物阻挡,因此无法在室内环境中实现精确定位。伪卫星可以模拟类似的室外卫星信号,并且可以在室内环境中用作稳定可靠的定位信号源。因此,已经提出了一种好的替代方案,并且已经成为室内定位领域的研究热点。在伪卫星定位领域中仍然存在一些问题,例如:载波相位的整数模糊性,初始位置确定和低信号覆盖率。为了避免这些因素的局限性,提出一种基于同源阵列伪卫星指纹数据库匹配的室内定位系统,可以达到较高的定位精度。该定位系统的实现主要包括离线阶段和在线阶段。在离线阶段,首先收集室内环境中的载波相位数据,并建立指纹数据库。然后利用具有位置信息的变分自动编码(VAE)网络来学习伪卫星在潜空间中载波相位差的概率分布特征,以实现特征聚类。最后,利用学习到的隐藏特征构造深度神经网络,以进一步研究伪卫星的不同载波相位与不同室内位置之间的映射关系。在在线阶段,伪卫星的训练模型和实时载波阶段用于预测定位终端的位置。在本文中,通过大量实验,在动态和静态条件下评估了伪卫星定位系统的性能。通过对比实验评估了算法的有效性,实验结果表明,该定位系统在真实室内场景中的平均定位精度为0.39 m,95%的定位误差小于0.85 m,优于传统算法。指纹定位算法。

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