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McGET: A rapid image-based method to determine the morphological characteristics of gravels on the Gobi desert surface

机译:McGET:一种基于图像的快速方法,可确定戈壁沙漠表面砾石的形态特征

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摘要

The relationship between morphological characteristics (e.g. gravel size, coverage, angularity and orientation) and local geomorphic features (e.g. slope gradient and aspect) of desert has been used to explore the evolution process of Gobi desert. Conventional quantification methods are time-consuming, inefficient and even prove impossible to determine the characteristics of large numbers of gravels. We propose a rapid image-based method to obtain the morphological characteristics of gravels on the Gobi desert surface, which is called the "morphological characteristics gained effectively technique" (McGET). The image of the Gobi desert surface was classified into gravel clusters and background by a machine-learning "classification and regression tree" (CART) algorithm. Then gravel clusters were segmented into individual gravel clasts by separating objects in images using a "watershed segmentation" algorithm. Thirdly, gravel coverage, diameter, aspect ratio and orientation were calculated based on the basic principles of 2D computer graphics. We validated this method with two independent datasets in which the gravel morphological characteristics were obtained from 2728 gravels measured in the field and 7422 gravels measured by manual digitization. Finally, we applied McGET to derive the spatial variation of gravel morphology on the Gobi desert along an alluvial-proluvial fan located in Hami, Xinjiang, China. The validated results show that the mean gravel diameter measured in the field agreed well with that calculated by McGET for large gravels (R-2 = 0.89, P 0.001). Compared to manual digitization, the McGET accuracies for gravel coverage, gravel diameter and aspect ratio were 97%, 83% and 96%, respectively. The orientation distributions calculated were consistent across two different methods. More importantly, McGET significantly shortens the time cost in obtaining gravel morphological characteristics in the field and laboratory. The spatial variation results show that the gravel coverage ranged from 88% to 65%, the gravel diameter was unimodally distributed and ranged from 19 mm to 13 mm. Most gravels were bladed or rod-like, with a mean aspect ratio of 1.57, and had no preferred orientation on the surveyed Gobi desert. From the center to the edge of the fan, gravel coverage decreased 2.2% per 100 m elevation decrease (R-2 = 0.69, P 0.001), mean gravel diameter decreased 0.5 mm per 100 m elevation decrease (R-2 = 0.52, P 0.001), and mean aspect ratio slightly increased 0.004 per 100 m elevation decrease (R-2 = 0.26, P 0.05). These results imply that surface washing was the main process on the investigated Gobi desert. This study demonstrates that the new method can quickly and accurately calculate the gravel coverage, diameter, aspect ratio and orientation from the images of Gobi desert. (C) 2017 Elsevier B.V. All rights reserved.
机译:沙漠的形态特征(例如砾石大小,覆盖范围,角度和方向)与局部地貌特征(例如坡度和坡度)之间的关系已被用于探索戈壁沙漠的演化过程。传统的定量方法耗时,效率低下,甚至无法确定大量砾石的特征。我们提出了一种基于图像的快速方法来获取戈壁沙漠表面砾石的形态特征,这被称为“有效获得形态特征技术”(McGET)。通过机器学习的“分类和回归树”(CART)算法将戈壁沙漠表面的图像分类为砾石簇和背景。然后,通过使用“分水岭分割”算法将图像中的对象分离,将砾石簇分割成单独的砾石碎屑。第三,根据二维计算机图形学的基本原理,计算出砾石覆盖率,直径,纵横比和方向。我们通过两个独立的数据集验证了该方法的有效性,其中两个数据集分别从现场测量的2728个砾石和手动数字化测量的7422个砾石获得了砾石形态特征。最后,我们利用McGET推导了位于中国新疆哈密市的冲积扇形成的戈壁沙漠砾石形态的空间变化。验证的结果表明,在现场测得的平均砾石直径与McGET计算的大型砾石的直径非常吻合(R-2 = 0.89,P <0.001)。与手动数字化相比,McGET的砾石覆盖率,砾石直径和纵横比的准确性分别为97%,83%和96%。计算出的取向分布在两种不同的方法上是一致的。更重要的是,McGET大大缩短了在现场和实验室获得砾石形态特征的时间成本。空间变化结果表明,砾石覆盖率在88%至65%之间,砾石直径呈单峰分布,范围在19mm至13mm之间。大多数砾石为叶片状或棒状,平均纵横比为1.57,在被调查的戈壁沙漠上没有优选的取向。从风扇的中心到边缘,每增加100 m高度,砾石覆盖率降低2.2%(R-2 = 0.69,P <0.001),每增加100 m高度,砾石平均直径降低0.5 mm(R-2 = 0.52, P <0.001),且平均纵横比每升高100 m高度会稍微增加0.004(R-2 = 0.26,P <0.05)。这些结果表明,在被调查的戈壁沙漠中,表面冲洗是主要过程。这项研究表明,该新方法可以根据戈壁沙漠的图像快速准确地计算出砾石覆盖率,直径,纵横比和方向。 (C)2017 Elsevier B.V.保留所有权利。

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