首页> 外文期刊>Progress in Physical Geography >Automated mapping of relict patterned ground: An approach to evaluate morphologically subdued landforms using unmanned-aerial-vehicle and structure-from-motion technologies
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Automated mapping of relict patterned ground: An approach to evaluate morphologically subdued landforms using unmanned-aerial-vehicle and structure-from-motion technologies

机译:依赖封锁图案地面的自动映射:使用无人机 - 飞行器和结构 - 从运动技术评估形态学较南地貌的方法

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Relict landforms provide a wealth of information on the evolution of the modern landscape and climate change in the past. To improve understanding of the origin and development of these landforms we need better spatial measurements across a variety of scales. This can be challenging using conventional surveying techniques due to difficulties in landform recognition on the ground (e.g. weak visual/topographic expression) and spatially variable areas of interest. Here we explore the appropriateness of existing remote sensing datasets (aerial LiDAR and aerial photography) and newly acquired unmanned aerial vehicle (UAV) imagery of a test site on the upland of Dartmoor in SW England (Leeden Tor) for the recognition and automated mapping of relict patterned ground composed of stripes and polygons. We find that the recognition of these landforms is greatly enhanced by automated mapping using spectral two-dimensional imagery. Image resolution is important, with the recognition of elements (boulders) of <1 m maximised from the highest resolution imagery (UAV red-green-blue (RGB)) and recognition of landforms (10–100 m scale) maximised on coarser resolution aerial imagery. Topographic metrics of these low relief (0.5 m) landforms are best extracted from structure-from-motion (SfM) processed UAV true-colour imagery, and in this context the airborne LiDAR data proved less effective. Integrating automated mapping using spectral attributes and SfM-derived digital surface models from UAV RGB imagery provides a powerful tool for rapid reconnaissance of field sites to facilitate the extraction of meaningful topographic and spatial metrics that can inform on the origin of relict landform features. Care should be given to match the scale of features under consideration to the appropriate scale of datasets available.
机译:RETICT地貌提供了丰富的信息,了解过去现代景观和气候变化的演变。为了提高这些地形的起源和发展的理解,我们需要各种秤的更好的空间测量。由于地面上的地形识别困难(例如,视觉/地形表达式弱)和空间可变地区,这可能是使用传统测量技术具有挑战性的。在这里,我们探讨了现有遥感数据集(空中激光雷达和航空摄影)的适当性,并在SW英格兰(Leeden Tor)的达特马尔山上的达特摩楼上的测试场的新收购无人驾驶飞行器(UAV)图像,用于识别和自动化依赖由条纹和多边形组成的图案地面。我们发现,通过使用光谱二维图像的自动映射,通过自动映射大大提高了对这些地形的认可。图像分辨率很重要,识别来自最高分辨率图像(UAV红绿蓝(RGB))最大化的元素(巨石)和识别地貌(10-100米级)最大化在粗糙分辨率上图像。这些低浮雕(0.5米)地形的地形指标最佳地从结构 - 从动作(SFM)加工过的UAV真彩色图像中提取,并且在此上下文中,空中激光雷达数据证明了更有效的。使用频谱属性和来自UAV RGB Imager的SFM导出的数字表面模型集成了自动映射,提供了一种强大的工具,用于快速侦察现场网站,以便于提取可以通知refirt地形功能的起源的有意义的地形和空间指标。应注意匹配所考虑的特征规模,以适当的数据集可用的数据集。

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