LGAISPMar 25, 2025

SAFE: Self-Adjustment Federated Learning Framework for Remote Sensing Collaborative Perception

arXiv:2504.03700v12 citationsh-index: 5IEEE Trans Geosci Remote Sens
Originality Incremental advance
AI Analysis

This addresses data privacy and accuracy issues for remote sensing satellite systems, but it is incremental as it builds on existing federated learning methods.

The paper tackles the problem of data leakage, communication overhead, and reduced accuracy in distributed remote sensing models by proposing the SAFE framework, which uses federated learning and achieves validated effectiveness in real-world image classification and object segmentation datasets.

The rapid increase in remote sensing satellites has led to the emergence of distributed space-based observation systems. However, existing distributed remote sensing models often rely on centralized training, resulting in data leakage, communication overhead, and reduced accuracy due to data distribution discrepancies across platforms. To address these challenges, we propose the \textit{Self-Adjustment FEderated Learning} (SAFE) framework, which innovatively leverages federated learning to enhance collaborative sensing in remote sensing scenarios. SAFE introduces four key strategies: (1) \textit{Class Rectification Optimization}, which autonomously addresses class imbalance under unknown local and global distributions. (2) \textit{Feature Alignment Update}, which mitigates Non-IID data issues via locally controlled EMA updates. (3) \textit{Dual-Factor Modulation Rheostat}, which dynamically balances optimization effects during training. (4) \textit{Adaptive Context Enhancement}, which is designed to improve model performance by dynamically refining foreground regions, ensuring computational efficiency with accuracy improvement across distributed satellites. Experiments on real-world image classification and object segmentation datasets validate the effectiveness and reliability of the SAFE framework in complex remote sensing scenarios.

Foundations

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