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SWiBluX: Multi-Sensor Deep Learning Fingerprint for Precise Real-Time Indoor Tracking

机译:SWIBLUX:多传感器深度学习指纹,可用于精确实时室内跟踪

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摘要

Indoor/outdoor localization topic has gained a significant research interest due to the wide range of potential applications. Commonly, the Fingerprinting methods for spatial characterization of the environments monitored are employed in deterministic/statistical estimation. However, there are Fingerprint parameters that are generally neglected and can seriously affect the performance yielding to low accurate location. Nowadays, machine and deep learning (DL) methods are employed in this topic due to its ability to approximate complex non-linear models being capable of mitigating the undesirable effects of wireless propagation. In this paper, a complete overview of most influential aspects in Fingerprinting and indoor tracking methods is presented. Furthermore, a novel multi-modal complete tracking system, called SWiBluX, based on statistic and DL techniques is presented. The system relies on relevant feature extraction from available data sources to estimate user's/target indoor position using a multi-phase statistical Fingerprint and DL disruptive approach. In addition, a Gaussian outlier filter is applied to the position estimation model output to further reduce the error in the estimation. The set of experiments performed shows that Fingerprint positioning accuracy estimation can be improved up to 45% resulting in a final estimation error that outperforms related literature.
机译:室内/室外本地化主题由于广泛的潜在应用而获得了显着的研究兴趣。通常,在确定性/统计估计中采用监视的环境的用于空间表征的指纹识别方法。然而,通常存在指纹参数,通常忽略并且可以严重影响屈服于低精确位置的性能。如今,由于其能够近似复杂的非线性模型能够减轻无线传播的不期望的影响,因此在本主题中采用了机器和深度学习(DL)方法。在本文中,提出了指纹和室内跟踪方法中大多数有影响力方面的完整概述。此外,介绍了一种基于统计和DL技术的新型多模态完整跟踪系统,称为SWIBLUM。该系统依赖于可用数据源的相关特征提取来使用多相统计指纹和DL中断方法来估计用户/目标室内位置。此外,高斯异常值滤波器应用于位置估计模型输出,以进一步降低估计中的错误。该组实验表明,指纹定位精度估计可以提高至45%,导致最终估计误差优于相关的文献。

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