Towards Privacy-preserved Pre-training of Remote Sensing Foundation Models with Federated Mutual-guidance Learning
Journal:
arXiv
Published Date:
Mar 14, 2025
Abstract
Traditional Remote Sensing Foundation models (RSFMs) are pre-trained with a
data-centralized paradigm, through self-supervision on large-scale curated
remote sensing data. For each institution, however, pre-training RSFMs with
limited data in a standalone manner may lead to suboptimal performance, while
aggregating remote sensing data from multiple institutions for centralized
pre-training raises privacy concerns. Seeking for collaboration is a promising
solution to resolve this dilemma, where multiple institutions can
collaboratively train RSFMs without sharing private data. In this paper, we
propose a novel privacy-preserved pre-training framework (FedSense), which
enables multiple institutions to collaboratively train RSFMs without sharing
private data. However, it is a non-trivial task hindered by a vicious cycle,
which results from model drift by remote sensing data heterogeneity and high
communication overhead. To break this vicious cycle, we introduce Federated
Mutual-guidance Learning. Specifically, we propose a Server-to-Clients Guidance
(SCG) mechanism to guide clients updates towards global-flatness optimal
solutions. Additionally, we propose a Clients-to-Server Guidance (CSG)
mechanism to inject local knowledge into the server by low-bit communication.
Extensive experiments on four downstream tasks demonstrate the effectiveness of
our FedSense in both full-precision and communication-reduced scenarios,
showcasing remarkable communication efficiency and performance gains.