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首页> 外文期刊>Journal of Hydrology >A refined automated grain sizing method for estimating river-bed grain size distribution of digital images
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A refined automated grain sizing method for estimating river-bed grain size distribution of digital images

机译:一种用于估计数字图像河床粒度分布的改进的自动粒度调整方法

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摘要

Natural 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.
机译:天然床的地形和栖息地受各种形状和大小的砾石组成的影响。传统的粒度分布测量方法既费时又费力。图像处理技术的最新进展有助于通过数字图像进行自动粒度测量。这项研究引入了一种改进的自动粒度调整方法(R-AGS),该方法结合了神经模糊网络,用于自动估计晶粒尺寸分布,特别是对于由16毫米至512.毫米范围内的晶粒组成的数字图像。从台湾东北部的兰阳河床捕获的总共130张数字图像用于评估R-AGS的性能。我们证明了神经模糊网络可以充分识别二进制阈值,这是AGS程序的关键参数,并且所提出的R-AGS可以直观地用于自动准确地估算晶粒尺寸分布,而每个数字的劳动强度却要低得多图片。此外,通过更新与本研究明显不同的图像样本的规则节点,很容易重建网络。因此,它的适用性和实用性可以得到扩展。

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