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Bayesian Deep Learning for Segmentation for Autonomous Safe Planetary LandingHazard detection is critical for enabling autonomous landing on planetary surfaces. Current state-of-the-art methods leverage traditional computer vision approaches to automate the identification of safe terrain from input digital elevation models (DEMs). However, performance for these methods can degrade for input DEMs with increased sensor noise. In the last decade, deep learning techniques have been developed for various applications. Nevertheless, their applicability to safety-critical space missions has often been limited due to concerns regarding their outputs’ reliability. In response to these limitations, this paper proposes an application of the Bayesian deep learning segmentation method for hazard detection. The developed approach enables reliable, safe landing site detection by i) generating simultaneously a safety prediction map and its uncertainty map via Bayesian deep learning and semantic segmentation, and ii) using the uncertainty map to filter out the uncertain pixels in the prediction map so that the safe site identification is performed only based on the certain pixels (i.e., pixels for which the model is certain about its safety prediction). Experiments are presented with simulated data based on a Mars HiRISE digital terrain model by varying uncertainty threshold and noise levels to demonstrate the performance of the proposed approach.
Document ID
20250001916
Acquisition Source
2230 Support
Document Type
Accepted Manuscript (Version with final changes)
Authors
Kento Tomita
(Georgia Institute of Technology Atlanta, United States)
Katherine A Skinner
(University of Michigan–Ann Arbor Ann Arbor, United States)
Koki Ho
(Georgia Institute of Technology Atlanta, United States)
Date Acquired
February 20, 2025
Publication Date
September 26, 2022
Publication Information
Publication: Journal of Spacecraft and Rockets
Publisher: American Institute of Aeronautics and Astronautics
Volume: 59
Issue: 6
Issue Publication Date: November 1, 2022
ISSN: 0022-4650
e-ISSN: 1533-6794
Subject Category
Spacecraft Instrumentation and Astrionics
Funding Number(s)
CONTRACT_GRANT: 80NSSC20K0064
Distribution Limits
Public
Copyright
Use by or on behalf of the US Gov. Permitted.
Technical Review
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