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A generalized framework for inferring river bathymetry from image-derived velocity fields

March 28, 2025

Although established techniques for remote sensing of river bathymetry perform poorly in turbid water, image velocimetry can be effective under these conditions. This study describes a framework for mapping both of these attributes: Depths Inferred from Velocities Estimated by Remote Sensing, or DIVERS. The workflow involves linking image-derived velocities to depth via a flow resistance equation and invoking an optimization algorithm. We generalized an earlier formulation of DIVERS by: (1) using moving aircraft river velocimetry (MARV) to obtain a continuous, spatially extensive velocity field; (2) working within a channel-centered coordinate system; (3) allowing for local optimization of multiple parameters on a per-cross section basis; and (4) introducing a second objective function that can be used when discharge is not known. We also quantified the sensitivity of depth estimates to each parameter and input variable. MARV-based velocity estimates agreed closely with field measurements (R2=0.81">R2=0.81) and the use of DIVERS led to cross-sectional mean depths that were correlated with in situ observations (R2=0.75">R2=0.75). Errors in the input velocity field had the greatest impact on depth estimates, but the algorithm was not highly sensitive to initial parameter estimates when a known discharge was available to constrain the optimization. The DIVERS framework is predicated upon a number of simplifying assumptions — steady, uniform, one-dimensional flow and a strict, purely local proportionality between depth and velocity — that impose important limitations, but our results suggest that the approach can provide plausible, first-order estimates of river depths.

Publication Year 2025
Title A generalized framework for inferring river bathymetry from image-derived velocity fields
DOI 10.1016/j.geomorph.2025.109732
Authors Carl J. Legleiter, Paul J. Kinzel
Publication Type Article
Publication Subtype Journal Article
Series Title Geomorphology
Index ID 70265042
Record Source USGS Publications Warehouse
USGS Organization WMA - Observing Systems Division
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