The technology of dynamic map fusion among networked vehicles has been developed to enlarge sensing ranges and improve sensing accuracies for individual vehicles. This paper proposes a federated learning (FL) based dynamic map fusion framework to achieve high map quality despite unknown numbers of objects in fields of view (FoVs), various sensing and model uncertainties, and missing data labels for online learning. The novelty of this work is threefold: (1) developing a three-stage fusion scheme to predict the number of objects effectively and to fuse multiple local maps with fidelity scores; (2) developing an FL algorithm which fine-tunes feature models (i.e., representation learning networks for feature extraction) distributively by aggregating model parameters; (3) developing a knowledge distillation method to generate FL training labels when data labels are unavailable. The proposed framework is implemented in the Car Learning to Act (CARLA) simulation platform. Extensive experimental results are provided to verify the superior performance and robustness of the developed map fusion and FL schemes.
翻译:开发了网络车辆动态地图集成技术,以扩大遥感范围,改进个人车辆的感知能力,本文件提议了一个基于联合学习(FL)的动态地图集成框架,以达到高地图质量,尽管观察领域物体数量不明(FoVs)、各种遥感和模型不确定性以及网上学习缺少的数据标签。这项工作的新颖之处有三重:(1) 开发一个三阶段集成计划,以有效预测物体数量,并使多份本地地图与忠诚分数相结合;(2) 开发一种FL算法,通过集成模型参数来分配精细特征模型(即特征提取代表学习网络);(3) 开发一种知识蒸馏方法,以便在没有数据标签的情况下生成FL培训标签。拟议的框架在“汽车学习到行动”模拟平台中实施。提供了广泛的实验结果,以核实已开发的地图集成和FL计划的最佳性能和稳健性。