Onboard Neuromorphic Split Computing via Optical Links for LEO Remote Sensing
Onboard Neuromorphic Split Computing via Optical Links for LEO Remote Sensing
Low Earth orbit (LEO) satellite constellations increasingly require onboard intelligence under strict power and communication constraints. This paper proposes a neuromorphic split computing framework tailored for hierarchical LEO systems, where edge satellites perform event-driven sensing using dynamic vision sensors (DVS) and lightweight spiking neural network (SNN) encoders, while core satellites conduct inference using a powerful SNN decoder. A learned spike mapping scheme enables direct transmission over optical inter-satellite links (OISLs) without conventional modulation overhead. Experimental results on synthetic aerial scene classification demonstrate that the proposed architecture achieves accuracy on par with modern large vision-based pipelines, while offering energy efficiency comparable to that of existing lightweight implementations. These findings highlight the potential of neuromorphic computing for energy-efficient inter-satellite split computing in LEO remote sensing missions.
Zihang Song、Petar Popovski
航空航天技术遥感技术计算技术、计算机技术
Zihang Song,Petar Popovski.Onboard Neuromorphic Split Computing via Optical Links for LEO Remote Sensing[EB/OL].(2025-07-11)[2025-07-25].https://arxiv.org/abs/2507.08490.点此复制
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