Deep learning has been widely adopted for channel state information (CSI)-fingerprinting indoor localization systems. These systems usually consist of two main parts, i.e., a positioning network that learns the mapping from high-dimensional CSI to physical locations and a tracking system that utilizes historical CSI to reduce the positioning error. This paper presents a new localization system with high accuracy and generality. On the one hand, the receptive field of the existing convolutional neural network (CNN)-based positioning networks is limited, restricting their performance as useful information in CSI is not explored thoroughly. As a solution, we propose a novel attention-augmented Residual CNN to utilize the local information and global context in CSI exhaustively. On the other hand, considering the generality of a tracking system, we decouple the tracking system from the CSI environments so that one tracking system for all environments becomes possible. Specifically, we remodel the tracking problem as a denoising task and solve it with deep trajectory prior. Furthermore, we investigate how the precision difference of inertial measurement units will adversely affect the tracking performance and adopt plug-and-play to solve the precision difference problem. Experiments show the superiority of our methods over existing approaches in performance and generality improvement.
翻译:对于频道状态信息(CSI)的室内本地化系统,广泛采用深度学习,这些系统通常由两个主要部分组成,即:定位网络,从高维 CSI到物理地点学习绘图,定位网络,从高维 CSI到物理地点学习绘图;跟踪系统,利用历史 CSI,减少定位错误;本文件介绍了一个新的定位系统,其精确性和一般性很高;一方面,现有神经神经神经网络定位网络(CNN)定位网络的接收领域有限,其作为CSI有用信息的性能没有得到充分探索。作为一种解决办法,我们建议采用新的关注增强的遗留CNNCN,以利用CSI的本地信息和全球背景。另一方面,考虑到跟踪系统的普遍性,我们将跟踪系统与CSI环境分离,以便有可能为所有环境建立一个跟踪系统。具体地说,我们把跟踪问题重新塑造成消音化任务,并用更深的轨迹来解决这个问题。此外,我们调查惯性测量单位的精确差异将如何不利地影响CSI的跟踪性能和全局性改进方法。