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首页> 外文期刊>Journal of Maps >Landform and landscape mapping, French Guiana (South America)
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Landform and landscape mapping, French Guiana (South America)

机译:地形和景观测绘,法属圭亚那(南美)

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In this paper two geomorphologic maps (landform level and landscape level) are presented covering the French Guianan rainforest (84,000?km~(2)) using full-resolution Shuttle Radar Topography Mission (SRTM) data. The entire country was segmented into 224,000 landform units on the basis of an original object-oriented approach using a modified counting box algorithm. A Principal Components Analysis (PCA) followed by k-means clustering (Ward's method) identified 12 different landform types corresponding to theoretical elementary landforms. The landscape map was generated by analyzing the spatial distribution of the different landform types. The different maps and models were compared with topographic field data collected on 92 transects totaling 260?km in length. The object-focused approach is a very efficient method that preserves geomorphologic consistency and discriminates between landforms using simple descriptors that are easily understood by non-geomorphologists. Despite major noise in the data, the landform map proved to be reliable and provided a strong spatial structure for the definition of landscape units. We recommend using the landform map at scales 1: 100,000–1: 250,000. Landscape map, used on a 1:1,000,000–1:2,000,000 scale, enabled us to draw bio-geographical limits in this region and provides exhaustive relief information that usefully supplements the geological map.
机译:本文利用全分辨率航天飞机雷达地形任务(SRTM)数据,绘制了覆盖法国圭亚那雨林(84,000?km〜(2))的两个地貌图(地形水平和景观水平)。根据原始的面向对象方法,使用改良的计数盒算法,将整个国家划分为224,000个地形单位。主成分分析(PCA)然后进行k均值聚类(Ward方法),确定了12种与理论基本地貌相对应的地貌类型。通过分析不同地貌类型的空间分布来生成景观图。将不同的地图和模型与在总长度260?km的92个样点上收集的地形数据进行了比较。以对象为中心的方法是一种非常有效的方法,它可以保留地貌一致性,并使用非地貌学家容易理解的简单描述符来区分地貌。尽管数据中存在大量噪声,但地形图仍然可靠,并为定义景观单位提供了强大的空间结构。我们建议使用比例尺为1:100,000-1:250,000的地形图。使用比例为1:1,000,000–1:2,000,000的景观图,使我们能够绘制该区域的生物地理范围,并提供详尽的浮雕信息,对地形图是有用的补充。

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