Article ID Journal Published Year Pages File Type
4576391 Journal of Hydrology 2013 10 Pages PDF
Abstract

SummaryNatural bed topography and habitat is affected by the composition of gravels in various shapes and sizes. Traditional measurement methods for grain size distribution are time-consuming and labor-intensive. Recent advances in image processing techniques facilitate automated grain size measurement through digital images. This study introduces a refined automated grain sizing method (R-AGS) incorporating a neural fuzzy network for automatically estimating the grain size distribution, specifically for digital images composed of grains ranging from 16 mm to 512 mm. A total of 130 digital images captured from the Lanyang river-bed in northeast Taiwan are used to assess the R-AGS performance. We demonstrate the neural fuzzy network can adequately identify the binary threshold, which is a crucial parameter of the AGS procedure, and the proposed R-AGS can be intelligibly used for automated accurate estimation of grain size distribution with much less labor-intensiveness for each digital image. Moreover, it is easy to re-construct the network by updating rule nodes for image samples significantly different from this study; consequently its applicability and practicability could be expanded.

► Image processing techniques facilitate automated grain size measurement. ► We propose a refined automated grain sizing method (R-AGS) for estimating grain size. ► 130 Digital images are used to assess the R-AGS performance. ► The R-AGS outperforms two pivotal methods in estimating grain size distributions. ► This study moves one step toward the practical automated grain-size measurements.

Related Topics
Physical Sciences and Engineering Earth and Planetary Sciences Earth-Surface Processes
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