Radio based positioning of a user equipment (UE) based on deep learning (DL) methods using channel state information (CSI) fingerprints have shown promising results. DL models are able to capture complex properties embedded in the CSI about a particular environment and map UE's CSI to the UE's position. However, the CSI fingerprints and the DL models trained on such fingerprints are highly dependent on a particular propagation environment, which generally limits the transfer of knowledge of the DL models from one environment to another. In this paper, we propose a DL model consisting of two parts: the first part aims to learn environment independent features while the second part combines those features depending on the particular environment. To improve transfer learning, we propose a meta learning scheme for training the first part over multiple environments. We show that for positioning in a new environment, initializing a DL model with the meta learned environment independent function achieves higher UE positioning accuracy compared to regular transfer learning from one environment to the new environment, or compared to training the DL model from scratch with only fingerprints from the new environment. Our proposed scheme is able to create an environment independent function which can embed knowledge from multiple environments and more effectively learn from a new environment.
翻译:使用频道状态信息(CSI)指纹的基于深度学习(DL)方法的用户设备无线电定位(UE)显示有希望的结果。 DL模型能够捕捉到CSI中关于特定环境的复杂属性,并将UE的 CSI 图像映射到 UE 位置。然而, CSI 指纹和通过这种指纹培训的 DL 模型高度依赖特定传播环境,这一般限制了DL 模型的知识从一个环境向另一个环境的转移。在本文件中,我们提议了一个由两部分组成的DL模型:第一部分旨在学习环境独立特征,第二部分则根据特定环境将这些特征结合起来。为了改进转移学习,我们提出了在多个环境中培训第一部分的元学习计划。我们表明,在新环境中定位时,将DL 模型与元环境独立功能初始化为元,与从一个环境向新环境的定期转移学习相比,或者与仅从新环境的指纹培训DL模型相比,UE定位精确度更高。我们提议的计划能够创建一种独立环境独立功能,从多个环境中嵌入知识,并更有效地学习。