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首页> 外文期刊>Mathematical geology >Automated sizing of coarse-grained sediments: Image-processing procedures
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Automated sizing of coarse-grained sediments: Image-processing procedures

机译:粗颗粒沉积物的自动上浆:图像处理程序

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摘要

This is the first in a pair of papers in which we present image-processing-based procedures for the measurement of fluvial gravels. The spatial and temporal resolution of surface grain-size characterization is constrained by the time-consuming and costly nature of traditional measurement techniques. Several groups have developed image-processing-based procedures, but none have demonstrated the transferability of these techniques between sites with different lithological, clast form and textural characteristics. Here we focus on image-processing procedures for identifying and measuring image objects (i.e. grains); the second paper examines the application of such procedures to the measurement of fluvially deposited gravels. Four image-segmentation procedures are developed, each having several internal parameters, giving a total of 416 permutations. These are executed on 39 images from three field sites at which the clasts have contrasting physical properties. The performance of each procedure is evaluated against a sample of manually digitized grains in the same images, by comparing three derived statistics. The results demonstrate that it is relatively straightforward to develop procedures that satisfactorily identify objects in any single image or a set of images with similar sedimentary characteristics. However, the optimal procedure is that which gives consistently good results across sites with dissimilar sedimentary characteristics. We show that neighborhood-based operations are the most powerful, and a morphological bottom-hat transform with a double threshold is optimal. It is demonstrated that its performance approaches that of the procedures giving the best results for individual sites. Overall, it out-performs previously published, or improvements to previously published, methods.
机译:这是两篇论文中的第一篇,其中我们介绍了基于图像处理的河流砾石测量程序。表面粒度表征的空间和时间分辨率受到传统测量技术耗时且昂贵的特性的限制。几个小组已经开发了基于图像处理的程序,但是没有一个小组证明这些技术在具有不同岩性,岩屑形式和质地特征的站点之间的可移植性。在这里,我们重点介绍用于识别和测量图像对象(即谷物)的图像处理程序;第二篇论文考察了这些程序在测量河床沉积砾石中的应用。开发了四个图像分割程序,每个程序都有几个内部参数,总共提供416个排列。这些是在来自三个现场的39个影像上执行的,这些影像在这些现场具有鲜明的物理特性。通过比较三个导出的统计数据,针对同一图像中的手动数字化谷物样本评估每个过程的性能。结果表明,开发可令人满意地识别任何单个图像或一组具有相似沉积特征的图像中的物体的程序相对简单。但是,最佳程序是在具有不同沉积特征的站点之间始终获得良好结果。我们表明,基于邻域的操作是最强大的,具有双阈值的形态学底帽子变换是最佳的。结果表明,它的性能接近为单个站点提供最佳结果的过程。总体而言,它的性能优于先前发布的方法或对先前发布的方法的改进。

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