Quantifying and analyzing rock trait distributions of rocky fault scarps using deep learning approach
Zhiang Chen, Chelsea Scott, Devin Keating, Amanda Clarke, Jnaneshwar, Das, Ramon Arrowsmith

TL;DR
This study employs deep learning to segment rocks on a fault scarp, creating a detailed semantic map that reveals how rock traits relate to fault morphology and provides new insights into fault scarp development.
Contribution
It introduces a novel deep learning-based method for mapping and analyzing rock trait distributions on fault scarps, linking geomorphology with granulometry.
Findings
Rock trait distributions vary with fault scarp height.
Higher fault scarps have larger, less well-sorted rocks.
Rock orientation correlates with fault scarp morphology.
Abstract
We apply a deep learning model to segment and identify rock characteristics based on a Structure-from-Motion orthomap and digital elevation model of a rocky fault scarp in the Volcanic Tablelands, eastern California. By post-processing the deep learning results, we build a semantic rock map and analyze rock trait distributions. The resulting semantic map contains nearly 230,000 rocks with effective diameters ranging from 2 cm to 250 cm. Rock trait distributions provide a new perspective on rocky fault scarp development and extend past research on scarp geometry including slope, height, and length. Heatmaps indicate rock size spatial distributions on the fault scarp and surrounding topographic flats. Median grain size changes perpendicular to the fault scarp trace with the largest rocks exposed on and downslope from the scarp footwall. Correlation analyses of the segmented fault scarp…
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Taxonomy
Topicsearthquake and tectonic studies · Landslides and related hazards · Seismic Imaging and Inversion Techniques
