Towards Satellite Non-IID Imagery: A Spectral Clustering-Assisted Federated Learning Approach
Luyao Zou, Yu Min Park, Chu Myaet Thwal, Yan Kyaw Tun, Zhu Han, and, Choong Seon Hong

TL;DR
This paper introduces a spectral clustering-assisted federated learning approach tailored for satellite data, effectively handling non-IID data and intermittent connections, leading to improved Earth observation accuracy.
Contribution
It proposes a novel orbit-based spectral clustering method integrated with federated learning and self-knowledge distillation for non-IID satellite data processing.
Findings
Achieves up to 2.15x higher accuracy than baseline methods.
Effectively clusters clients based on model update similarities.
Demonstrates robustness across multiple datasets.
Abstract
Low Earth orbit (LEO) satellites are capable of gathering abundant Earth observation data (EOD) to enable different Internet of Things (IoT) applications. However, to accomplish an effective EOD processing mechanism, it is imperative to investigate: 1) the challenge of processing the observed data without transmitting those large-size data to the ground because the connection between the satellites and the ground stations is intermittent, and 2) the challenge of processing the non-independent and identically distributed (non-IID) satellite data. In this paper, to cope with those challenges, we propose an orbit-based spectral clustering-assisted clustered federated self-knowledge distillation (OSC-FSKD) approach for each orbit of an LEO satellite constellation, which retains the advantage of FL that the observed data does not need to be sent to the ground. Specifically, we introduce…
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Taxonomy
MethodsSpectral Clustering
