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  1. NTNU SmallSat Lab For Students
  2. Project and Master Subjects 2025-2026
  3. Explainable AI on a GPU

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Explainable AI on a GPU

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  • Project and Master Subjects 2025-2026
    • Super-agile operation of small satellites
    • Early warning fault detection for satellite operations based on telemetry
    • Semi-controlled re-entry for a satellite using attitude control
    • System identification of environmental effects for a satellite during re-entry
    • Mu-analysis for agile satellite attitude control maneuvers
    • Enabling high-accuracy HYPSO image georeferencing by high-accuracy satellite pose estimation through postprocessing of satelitte sensor data
    • High-accuracy attitude determination of Earth observation satellites
    • Starlink: Signals of Opportunity positioning, navigation and timing (PNT)
    • GNSS-R: Simulator design of a GNSS-Reflectometry simulator
    • GNSS-R: Payload and embedded SW design
    • GNSS-R: GNSS jamming and spoofing source localization from space
    • GNSS-R: Formation flying of small satellites
    • GNSS-R: Novel ship-detection methods for GNSS-Reflectometry
    • Automatic Satellite Telemetry Anomaly Detection and Trend Analysis
    • Which works better, explainable AI or black-box AI?
    • Integrating the HYPSO constellation with the Copernicus Suite
    • Explainable AI on a GPU
    • What can the HYPSO-3 Hyperperspectral Cameras Observe?
    • Could a short-wave infrared hyperspectral imager characterize oil spills?
    • Coordinated Planning between a satellite constellation and a Autonomous Surface Vehicle
    • Calibration of Hyperspectral camera point-spread function
  • Past Projects
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Explainable AI on a GPU (F25/S26)

 

Project Description

Implementation of On-the-fly processing on graphics card / parallel processing for decomposition of HYPSO hyperspectral images, to show very high-speed implementation of green, safe and understandable ML for massive data streams.

Supervisor(s)

This project would be advised by Frank Westad and co-advised by Joe Garrett

NTNU – Norwegian University of Science and Technology

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