Modern indoor localization techniques are essential to overcome the weak GPS coverage in indoor environments. Recently, considerable progress has been made in Channel State Information (CSI) based indoor localization with signal fingerprints. However, CSI signal patterns can be complicated in the large and highly dynamic indoor spaces with complex interiors, thus a solution for solving this issue is urgently needed to expand the applications of CSI to a broader indoor space. In this paper, we propose an end-to-end solution including data collection, pattern clustering, denoising, calibration and a lightweight one-dimensional convolutional neural network (1D CNN) model with CSI fingerprinting to tackle this problem. We have also created and plan to open source a CSI dataset with a large amount of data collected across complex indoor environments at Colorado State University. Experiments indicate that our approach achieves up to 68.5% improved performance (mean distance error) with minimal number of parameters, compared to the best-known deep machine learning and CSI-based indoor localization works.
翻译:现代室内本地化技术对于克服室内环境全球定位系统覆盖薄弱的问题至关重要。最近,在以信号指纹为基础的海峡邦信息室内本地化方面取得了长足进展。然而,在具有复杂内部的大型和高度动态室内空间,CSI信号模式可能变得复杂,因此迫切需要解决这个问题的解决办法,将CSI的应用扩大到更广泛的室内空间。在本文件中,我们提出了一个端对端解决方案,包括数据收集、模式组合、脱色、校准和轻量级单维神经网络(CNN)模型,并配有CSI指纹来解决这个问题。我们还创建并计划打开CSI数据集,该数据集拥有在科罗拉多州大学复杂的室内环境中收集的大量数据。实验表明,我们的方法与最著名的深层机器学习和基于CSI的室内本地本地化工程相比,提高了68.5%的性能(平均距离误差),参数极少。