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首页> 外文期刊>Earth Surface Processes and Landforms: The journal of the British Geomorphological Research Group >CLustre: semi-automated lineament clustering for palaeo-glacial reconstruction
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CLustre: semi-automated lineament clustering for palaeo-glacial reconstruction

机译:集群:用于古冰川重建的半自动线簇

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Datasets containing large numbers (>10 000) of glacial lineaments are increasingly being mapped from remotely sensed data in order to develop a palaeo-glacial reconstruction or inversion'. The palimpsest landscape presents a complex record of past ice flow and deconstructing this information into a logical history is an involved task. One stage in this process requires the identification of sets of genetically linked lineaments that can form the basis of a reconstruction. This paper presents a semi-automated algorithm, CLustre, for lineament clustering that uses a locally adaptive, region growing, methodology. After outlining the algorithm, it is tested on synthetic datasets that simulate parallel and orthogonal cross-cutting lineaments, encompassing 1500 separate classifications. Results show robust classification in most scenarios, although parallel overlap of lineaments can cause false positive classification unless there are differences in lineament length. Case studies for Dubawnt Lake and Victoria Island, Canada, are presented and compared with existing datasets. For Dubawnt Lake 9 out of 14 classifications directly match incorporating 89% of lineaments. For Victoria Island 57 out of 58 classifications directly match incorporating 95% of lineaments. Differences are related to small numbers of unclassified lineaments and parallel cross-cutting lineaments that are of a similar length. CLustre enables the automated, repeatable, assignment of lineaments to flow sets using defined user criteria. This is important as qualitative visual interpretation may introduce bias, potentially weakening the testability of palaeo-glacial reconstructions. In addition, once classified, summary statistics of lineament clusters can be calculated and subsequently used during the reconstruction process. Copyright (c) 2015 John Wiley & Sons, Ltd.
机译:越来越多地从遥感数据中映射出包含大量(> 10000)冰川纹线的数据集,以进行古冰川重建或反演。最苍白的景观呈现了过去冰流的复杂记录,将这些信息解构成逻辑历史是一项艰巨的任务。这一过程的一个阶段要求确定可以构成重建基础的一系列遗传连锁谱系。本文提出了一种半自动化的算法CLustre,用于线状体聚类,它使用局部自适应的区域增长方法。概述算法后,将在模拟平行和正交横切面的合成数据集上进行测试,该数据集包含1500个单独的分类。在大多数情况下,结果都显示出可靠的分类,尽管平行排列的纹饰可能会导致假阳性分类,除非纹饰长度存在差异。介绍了加拿大杜邦湖和维多利亚岛的案例研究,并将其与现有数据集进行了比较。对于Dubawnt Lake,14个分类中的9个直接匹配,合并了89%的线条。对于维多利亚岛,58个分类中的57个直接匹配,合并了95%的线条。差异与少量未分类的纹样和长度相似的平行横切纹样有关。通过使用定义的用户标准,CLustre可以将线迹自动,可重复地分配给流程集。这很重要,因为定性的视觉解释可能会引入偏差,从而可能削弱古冰川重建的可测试性。此外,一旦分类,就可以计算界线簇的摘要统计量,并随后在重建过程中使用。版权所有(c)2015 John Wiley&Sons,Ltd.

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