Scalable neural pushbroom architectures for real-time denoising of hyperspectral images onboard satellites
Ziyao Yi, Davide Piccinini, Diego Valsesia, Tiziano Bianchi, Enrico Magli

TL;DR
This paper introduces a novel neural network architecture for real-time hyperspectral image denoising onboard satellites, balancing high-quality inference, low complexity, power scalability, and fault tolerance.
Contribution
It proposes a mixture of denoisers with causal, line-by-line processing that is resilient to faults and adaptable to power constraints, tailored for satellite hyperspectral imaging.
Findings
Real-time processing on low-power hardware achieved.
Competitive denoising quality with complex models.
Flexible tradeoffs between power, fault tolerance, and quality.
Abstract
The next generation of Earth observation satellites will seek to deploy intelligent models directly onboard the payload in order to minimize the latency incurred by the transmission and processing chain of the ground segment, for time-critical applications. Designing neural architectures for onboard execution, particularly for satellite-based hyperspectral imagers, poses novel challenges due to the unique constraints of this environment and imaging system that are largely unexplored by the traditional computer vision literature. In this paper, we show that this setting requires addressing three competing objectives, namely high-quality inference with low complexity, dynamic power scalability and fault tolerance. We focus on the problem of hyperspectral image denoising, which is a critical task to enable effective downstream inference, and highlights the constraints of the onboard…
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Taxonomy
TopicsRemote-Sensing Image Classification · Advanced Data Compression Techniques · Image and Signal Denoising Methods
