The spatial and temporal resolution of surface grain-size characterization is constrained by the
limitations of traditional measurement techniques. In this paper we present an extremely rapid
image-processing-based procedure for the measurement of exposed fluvial gravels and other coarsegrained
sediments, defining the steps required to minimize the errors in the derived grain-size
distribution. This procedure differs significantly from those used previously. It is based around a
robust object-detection algorithm that produces excellent results on images exhibiting a wide range
of sedimentary conditions, crucially, without any user intervention or site-specific parameterization.
The procedure is tested using a dataset comprising 39 images from three rivers with contrasting
grain lithology, shape, roundness and packing configuration and representing a very wide range of
textures. It is shown to perform more consistently than the best existing automated method,
achieving a precision equivalent to that obtainable by Wolman sampling, but taking between one
sixth and one twentieth of the time. The error in area-by-number grain-size distribution percentiles
is typically less than 0.05 Ï .
History
School
Social Sciences
Department
Geography and Environment
Pages
1179985 bytes
Citation
GRAHAM, D.J., RICE, S.P. and REID, I., 2005. A transferable method for the automated grain sizing of river gravels. Water Resources Research, 41 (7)