Visible light positioning (VLP) has drawn plenty of attention as a promising indoor positioning technique. However, in nonstationary environments, the performance of VLP is limited because of the highly time-varying channels. To improve the positioning accuracy and generalization capability in nonstationary environments, a cooperative VLP scheme based on federated learning (FL) is proposed in this paper. Exploiting the FL framework, a global model adaptive to environmental changes can be jointly trained by users without sharing private data of users. Moreover, a Cooperative Visible-light Positioning Network (CVPosNet) is proposed to accelerate the convergence rate and improve the positioning accuracy. Simulation results show that the proposed scheme outperforms the benchmark schemes, especially in nonstationary environments.
翻译:可见光定位(VLP)作为一种有前途的室内定位技术吸引了大量关注,但在非静止环境中,由于时间变化的渠道变化很大,VLP的性能有限,为了提高非静止环境中的定位准确性和一般化能力,本文件提出了基于联合学习(FL)的合作性VLP计划。利用FL框架,用户可以联合培训适应环境变化的全球模型,但不分享用户的私人数据。此外,还提议建立一个合作可见光定位网络(CVPosNet),以加快聚合率,提高定位的准确性。模拟结果表明,拟议的计划优于基准计划,特别是在非静止环境中。</s>