Recent channel state information (CSI)-based positioning pipelines rely on deep neural networks (DNNs) in order to learn a mapping from estimated CSI to position. Since real-world communication transceivers suffer from hardware impairments, CSI-based positioning systems typically rely on features that are designed by hand. In this paper, we propose a CSI-based positioning pipeline that directly takes raw CSI measurements and learns features using a structured DNN in order to generate probability maps describing the likelihood of the transmitter being at pre-defined grid points. To further improve the positioning accuracy of moving user equipments, we propose to fuse a time-series of learned CSI features or a time-series of probability maps. To demonstrate the efficacy of our methods, we perform experiments with real-world indoor line-of-sight (LoS) and non-LoS channel measurements. We show that CSI feature learning and time-series fusion can reduce the mean distance error by up to 2.5$\boldsymbol\times$ compared to the state-of-the-art.
翻译:最近的频道状态定位管道(CSI)依靠深度神经网络(DNNS)进行定位,以便从估计的CSI到位置的定位。由于真实世界通信收发器受到硬件缺陷的影响,基于CSI的定位系统通常依赖手工设计的特征。在本文中,我们提议基于CSI的定位管道,直接采用原始的CSI测量和学习特征,使用结构化的DNN(DNN)绘制概率图,描述发射机在预设的网点的可能性。为了进一步提高移动用户设备的定位准确性,我们提议结合一个CSI(CSI)学习功能的时间序列或概率地图的时间序列。为了展示我们的方法的有效性,我们用现实世界室内视线(LOS)和非LOS频道的测量进行实验。我们表明,CSI特征学习和时间序列聚变可以减少平均距离错误,与状态相比,最多可达2.5美元\boldsybolme times。