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A progressive black top hat transformation algorithm for estimating valley volumes on Mars

机译:一种用于估计火星谷体积的渐进黑顶礼帽变换算法

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摘要

The depth of valley incision and valley volume are important parameters in understanding the geologic history of early Mars, because they are related to the amount sediments eroded and the quantity of water needed to create the valley networks (VNs). With readily available digital elevation model (DEM) data, the Black Top Hat (BTH) transformation, an image processing technique for extracting dark features on a variable background, has been applied to DEM data to extract valley depth and estimate valley volume. Previous studies typically use a single window size for extracting the valley features and a single threshold value for removing noise, resulting in finer features such as tributaries not being extracted and underestimation of valley volume. Inspired by similar algorithms used in LiDAR data analysis to remove above-ground features to obtain bare-earth topography, here we propose a progressive BTH (PBTH) transformation algorithm, where the window size is progressively increased to extract valleys of different orders. In addition, a slope factor is introduced so that the noise threshold can be automatically adjusted for windows with different sizes. Independently derived VN lines were used to select mask polygons that spatially overlap the VN lines. Volume is calculated as the sum of valley depth within the selected mask multiplied by cell area. Application of the PBTH to a simulated landform (for which the amount of erosion is known) achieved an overall relative accuracy of 96%, in comparison with only 78% for BTH. Application of PBTH to Ma'adim Vallies on Mars not only produced total volume estimates consistent with previous studies, but also revealed the detailed spatial distribution of valley depth. The highly automated PBTH algorithm shows great promise for estimating the volume of VN on Mars on global scale, which is important for understanding its early hydrologic cycle.
机译:山谷切口的深度和山谷体积是了解火星早期地质历史的重要参数,因为它们与侵蚀的沉积物数量和建立山谷网络(VNs)所需的水量有关。借助随时可用的数字高程模型(DEM)数据,Black Top Hat(BTH)转换(一种用于提取可变背景上的暗部特征的图像处理技术)已应用于DEM数据,以提取谷底深度并估计谷底体积。先前的研究通常使用单个窗口大小来提取谷底特征,并使用单个阈值来去除噪声,从而导致更精细的特征,例如未提取支流和低估了谷底体积。受到LiDAR数据分析中使用的类似算法以去除地上特征以获得裸露地形的启发,此处我们提出了一种渐进式BTH(PBTH)变换算法,其中,窗口大小逐渐增大以提取不同阶次的谷底。另外,引入了一个斜率因子,以便可以针对具有不同大小的窗口自动调整噪声阈值。独立派生的VN线用于选择在空间上与VN线重叠的蒙版多边形。体积计算为所选蒙版内的谷底深度之和乘以单元面积。将PBTH应用于模拟地形(已知侵蚀量)可实现96%的总体相对准确度,而BTH仅为78%。 PBTH在火星上的马阿迪姆山谷上的应用不仅得出了与先前研究一致的总体积估计值,而且还揭示了谷深的详细空间分布。高度自动化的PBTH算法显示出在全球范围内估算火星上的VN量的巨大前景,这对于了解其早期水文循环非常重要。

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