pFedLVM: A Large Vision Model (LVM)-Driven and Latent Feature-Based Personalized Federated Learning Framework in Autonomous Driving
Wei-Bin Kou, Qingfeng Lin, Ming Tang, Sheng Xu, Rongguang Ye, Yang, Leng, Shuai Wang, Guofa Li, Zhenyu Chen, Guangxu Zhu, Yik-Chung Wu

TL;DR
This paper introduces pFedLVM, a federated learning framework using large vision models and latent features to improve autonomous driving models' personalization and generalization while reducing communication and computational costs.
Contribution
The paper proposes a novel federated learning framework that deploys large vision models on the server, exchanges learned features instead of model parameters, and incorporates personalization for autonomous driving.
Findings
pFedLVM reduces communication overhead significantly.
The framework enhances model personalization and generalization.
Experiments show state-of-the-art performance in autonomous driving tasks.
Abstract
Deep learning-based Autonomous Driving (AD) models often exhibit poor generalization due to data heterogeneity in an ever domain-shifting environment. While Federated Learning (FL) could improve the generalization of an AD model (known as FedAD system), conventional models often struggle with under-fitting as the amount of accumulated training data progressively increases. To address this issue, instead of conventional small models, employing Large Vision Models (LVMs) in FedAD is a viable option for better learning of representations from a vast volume of data. However, implementing LVMs in FedAD introduces three challenges: (I) the extremely high communication overheads associated with transmitting LVMs between participating vehicles and a central server; (II) lack of computing resource to deploy LVMs on each vehicle; (III) the performance drop due to LVM focusing on shared features…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data
