Automatic Characterization of Boulders on Planetary Surfaces From High‐Resolution Satellite Images

Author:

Prieur Nils C.123ORCID,Amaro Brian1ORCID,Gonzalez Emiliano14,Kerner Hannah5ORCID,Medvedev Sergei6,Rubanenko Lior17,Werner Stephanie C.23ORCID,Xiao Zhiyong8ORCID,Zastrozhnov Dmitry91011ORCID,Lapôtre Mathieu G. A.1ORCID

Affiliation:

1. Department of Earth & Planetary Sciences Stanford University Stanford CA USA

2. Center for Earth Evolution and Dynamics University of Oslo Oslo Norway

3. Center for Planetary Habitability University of Oslo Oslo Norway

4. Department of Geological Sciences California State Polytechnic University Pomona CA USA

5. School of Computing & Augmented Intelligence Arizona State University Tempe AZ USA

6. Medvedev Consulting Oslo Norway

7. Department of Civil & Environmental Engineering Technion Haifa Israel

8. Planetary Environmental and Astrobiological Research Laboratory School of Atmospheric Sciences Sun Yat‐Sen University Zhuhai China

9. Volcanic Basin Energy Research Oslo Norway

10. A.P. Karpinsky Russian Geological Research Institute Saint Petersburg Russia

11. Department of Geosciences University of Oslo Oslo Norway

Abstract

AbstractBoulders form from a variety of geological processes, which their size, shape, and orientation may help us better understand. Furthermore, they represent potential hazards to spacecraft landing that need to be characterized. However, mapping individual boulders across vast areas is extremely labor‐intensive, often limiting the extent over which they are characterized and the statistical robustness of obtained boulder morphometrics. To automate boulder characterization, we use an instance segmentation neural network, Mask R‐CNN, to detect and outline boulders in high‐resolution satellite and aerial images. Our neural network, BoulderNet, was trained from a data set of >33,000 boulders in >750 image tiles from Earth, the Moon, and Mars. BoulderNet not only correctly detects the majority of boulders in images but also identifies the outline of boulders with high fidelity, achieving average precision and recall values of 72% and 64% relative to manually digitized boulders from the test data set, when only detections with intersection‐over‐union ratios >50% are considered valid. These values are similar to those obtained from human mappers. On Earth, equivalent boulder diameters, aspect ratios, and orientations extracted from predictions were benchmarked against ground measurements and yield values within ±15%, ±0.20, and ±20° of their ground‐truth values, respectively. BoulderNet achieves better boulder detection and characterization performance relative to existing methods, providing a versatile open‐source tool to characterize entire boulder fields on planetary surfaces.

Funder

European Commission

Norges Forskningsråd

Publisher

American Geophysical Union (AGU)

Subject

Space and Planetary Science,Earth and Planetary Sciences (miscellaneous),Geochemistry and Petrology,Geophysics

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