Remote Sensing (Dec 2020)

DoMars16k: A Diverse Dataset for Weakly Supervised Geomorphologic Analysis on Mars

  • Thorsten Wilhelm,
  • Melina Geis,
  • Jens Püttschneider,
  • Timo Sievernich,
  • Tobias Weber,
  • Kay Wohlfarth,
  • Christian Wöhler

DOI
https://doi.org/10.3390/rs12233981
Journal volume & issue
Vol. 12, no. 23
p. 3981

Abstract

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Mapping planetary surfaces is an intricate task that forms the basis for many geologic, geomorphologic, and geographic studies of planetary bodies. In this work, we present a method to automate a specific type of planetary mapping, geomorphic mapping, taking machine learning as a basis. Additionally, we introduce a novel dataset, termed DoMars16k, which contains 16,150 samples of fifteen different landforms commonly found on the Martian surface. We use a convolutional neural network to establish a relation between Mars Reconnaissance Orbiter Context Camera images and the landforms of the dataset. Afterwards, we employ a sliding-window approach in conjunction with a Markov Random field smoothing to create maps in a weakly supervised fashion. Finally, we provide encouraging results and carry out automated geomorphological analyses of Jezero crater, the Mars2020 landing site, and Oxia Planum, the prospective ExoMars landing site.

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