• Menü menu
  • menu open menu
Publications
Digital

Simulating rover imagery to train deep learning systems for scientific target selection

Contributing authors of JOANNEUM RESEARCH:
Authors
Traxler, Christoph; Fritz, Laura; Nowak, Rebecca; Paar, Gerhard; Koeberl, Christian; Bechtold, Andreas; Garolla, Filippo; Sidla, Oliver
Abstract:
The remarkable success of deep learning (DL) for object and pattern recognition suggests its application to autonomic target selection of future Martian rover missions, to support planetary scientists and also exploring robots in preselecting possibly interesting regions in imagery, increase the overall scientific discoveries, and to speed-up the strategic decision-making. Deep learning requires large amounts of training data to work reliably. Many different geologic features are to be detected and to be trained for in a DL-systems. Past and ongoing missions such as the Mars Science Laboratory (MSL) do neither provide the necessary volume of training data nor existing “ground truth”. Therefore, realistic simulations are required. The scheme and workflow of the Mars-DL simulation is depicted in Figure 1. Realistic simulations are based on accurate 3D reconstructions of the Martian surface, which are obtained by the photogrammetric processing pipeline PRoVIP [1]. The resulting 3D terrain models can be virtually viewed from different angles and hence can be used to obtain large volumes of training data.
Title:
Simulating rover imagery to train deep learning systems for scientific target selection
Publikationsdatum
2020

Publikationsreihe

Proceedings
Europlanet Science Congress 2020 EPSC Abstracts Vol.14, EPSC2020-566, 2020

Related publications

Skip to content