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Autor(en):
M.P. Heimbach, P. Kumar, S.S. Shrestha, P. Glöckner, M. Plattner, C. Fassi, M. Schmidt
Zusammenfassung:
Satellites as small as cubesats and other Nanosatellites can generate vast amounts of optical data using highresolution
and multispectral image sensors. Coupled with the growing popularity of proliferated earth observation
constellations consisting of many small satellites instead of larger, more traditional earth observation
satellites, this presents new challenges.
Firstly, this data has to be downlinked from the satellites to ground stations, a task which is made more
complicated with increasing numbers of satellites in a constellation. Additionally, smaller satellites tend to
have less power available for transmitting, as well as smaller antennas, reducing downlink speeds. Secondly,
the data must be analyzed to extract mission-specific information depending on the current use-case: For
example, wildfires have to be identified or the location and type of ships detected. For many applications, only
these extracted meta-information are relevant, not the actual satellite image itself. These necessary steps of
downlinking and image analysis can lead to large delays between image acquisition and actionable decisions
being made on the basis of this data.
In this paper we describe the integration of an onboard image analysis payload into the UWE-5 satellite mission,
an educational communications satellite mission consisting of two 3U CubeSats. This processing unit features
two boards, each containing a Microchip PolarFire MPFS250T FPGA SoC. In this architecture, one FPGA
SoC controls the camera payload, while the second one synthesizes a Machine Learning (ML) accelerator to
analyze camera data onboard the satellite using Convolutional Neural Networks (CNNs). This approach enables
the satellite to evaluate the usefulness of specific images by analyzing the degree of cloud cover or to detect
features deemed important by the operator, accelerating the path from data acquisition to actionable insight
and reducing data volume.
Veranstaltung:
Deutscher Luft- und Raumfahrtkongress 2025, Augsburg
Verlag, Ort:
Deutsche Gesellschaft für Luft- und Raumfahrt - Lilienthal-Oberth e.V., Bonn, 2025
Medientyp:
Conference Paper
Sprache:
englisch
Format:
21,0 x 29,7 cm, 8 Seiten
URN:
urn:nbn:de:101:1-2512121408371.884618415280
DOI:
10.25967/650390
Stichworte zum Inhalt:
Onboard Image Processing, Edge AI, Machine Learning in Space
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Zitierform:
Heimbach, M.P.; Kumar, P.; et al. (2025): Managing the Data Flood - Analyzing Images Onboard Small Earth Observation Satellites. Deutsche Gesellschaft für Luft- und Raumfahrt - Lilienthal-Oberth e.V.. (Text). https://doi.org/10.25967/650390. urn:nbn:de:101:1-2512121408371.884618415280.
Veröffentlicht am:
12.12.2025
