Data downlink prioritization using image classification on-board a 6U CubeSat
Keenan A. A. Chatar, Ezra Fielding, Kei Sano, Kentaro Kitamura

TL;DR
This paper presents an onboard image classification and compression system for a 6U CubeSat to optimize data downlink by prioritizing desirable astronomical images using a lightweight CNN, addressing onboard resource constraints.
Contribution
It introduces a novel onboard classification and compression system using a lightweight CNN tailored for CubeSat constraints, trained on a star field dataset to improve data prioritization.
Findings
Achieved near 100% classification accuracy on star field data.
Demonstrated effective compression ratios with standard astronomical data compressors.
Validated system feasibility for onboard data prioritization in nanosatellites.
Abstract
Nanosatellites are proliferating as low-cost dedicated sensing systems with lean development cycles. Kyushu Institute of Technology and collaborators have launched a joint venture for a nanosatellite mission, VERTECS. The primary mission is to elucidate the formation history of stars by observing the optical-wavelength cosmic background radiation. The VERTECS satellite will be equipped with a small-aperture telescope and a high-precision attitude control system to capture the cosmic data for analysis on the ground. However, nanosatellites are limited by their onboard memory resources and downlink speed capabilities. Additionally, due to a limited number of ground stations, the satellite mission will face issues meeting the required data budget for mission success. To alleviate this issue, we propose an on-orbit system to autonomously classify and then compress desirable image data for…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
