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首页> 外文期刊>The Cryosphere Discussions >Brief communication: Rapid machine-learning-based extraction and measurement of ice wedge polygons in high-resolution digital elevation models
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Brief communication: Rapid machine-learning-based extraction and measurement of ice wedge polygons in high-resolution digital elevation models

机译:简短交流:在高分辨率数字高程模型中基于机器学习的快速提取和测量冰楔多边形

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We present a workflow for the rapid delineation and microtopographic characterization of ice wedge polygons within high-resolution digital elevation models. At the core of the workflow is a convolutional neural network used to detect pixels representing polygon boundaries. A watershed transformation is subsequently used to segment imagery into discrete polygons. Fast training times ( 5 min) permit an iterative approach to improving skill as the routine is applied across broad landscapes. Results from study sites near Utqia?vik (formerly Barrow) and Prudhoe Bay, Alaska, demonstrate robust performance in diverse tundra settings, with manual validations demonstrating 70–96?% accuracy by area at the kilometer scale. The methodology permits precise, spatially extensive measurements of polygonal microtopography and trough network geometry.
机译:我们提出了在高分辨率数字高程模型内快速描述冰楔多边形的特征和微观地形特征的工作流程。工作流的核心是卷积神经网络,用于检测代表多边形边界的像素。随后使用分水岭变换将图像分割为离散的多边形。快速的培训时间(<5分钟)允许使用迭代方法来提高技能,因为该例程适用于广泛的环境。来自Utqia?vik(以前的Barrow)和阿拉斯加Prudhoe湾附近的研究点的结果表明,在各种冻原环境下,其性能均表现出出色的性能,而人工验证表明,在千米尺度上,按面积计算的精度为70-96%。该方法可以对多边形的微形貌和波谷网络的几何形状进行精确的空间扩展测量。

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