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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >A new landscape metric for the identification of terraced sites: The Slope Local Length of Auto-Correlation (SLLAC)
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A new landscape metric for the identification of terraced sites: The Slope Local Length of Auto-Correlation (SLLAC)

机译:用于识别梯田的新景观度量:自相关的斜坡局部长度(SLLAC)

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摘要

This work presents the potential for high-resolution remote sensing data (LiDAR digital terrain models) to determine the spatial heterogeneity of terraced landscapes. The study objective is achieved through the identification of a new parameter that distinguishes this unique landscape form from more natural land formations. The morphological indicator proposed is called the Slope Local Length of Auto-Correlation (SLLAC), and it is derived from the local analysis of slope self-similarity. The SLACC is obtained over two steps: (ⅰ) calculating the correlation between a slope patch and a defined surrounding area and (ⅱ) identifying the characteristic length of correlation for each neighbourhood. The SLLAC map texture can be measured using a surface metrology metric called the second derivative of peaks, or Spc. For the present study, we tested the algorithm for two types of landscapes: a Mediterranean and an Alpine one. The research method involved an examination of both real LiDAR DTMs and simulated ones, in which it was possible to control terrace shapes and the percentage of area covered by terraces. The results indicate that SLLAC maps exhibit a random aspect for natural surfaces. In contrast, terraced landscapes demonstrate a higher degree of order, and this behaviour is independent of the morphological context and terracing system. The outcomes of this work also prove that Spc values decrease as the area of terraced surfaces increases within the investigated region: the Spc for terraced areas is significantly different from the Spc of a natural landscape. In areas of smooth natural morphology, the Spc identifies terraced areas with a 20% minimum height range covered in terraces. In contrast, in areas of steep morphologies and vertical cliffs, the algorithm performs well when terraces cover at least 50% of the investigated surface. Given the increasing importance of terraced landscapes, the proposed procedure offers a significant and promising tool for the exploration of spatial heterogeneity in terraced sites.
机译:这项工作为高分辨率遥感数据(LiDAR数字地形模型)确定梯田景观的空间异质性提供了潜力。通过确定一个新参数来实现研究目的,该参数将这种独特的景观形式与更多的自然土地形成区分开来。提出的形态学指标称为自相关的斜坡局部长度(SLLAC),它是根据对斜坡自相似性的局部分析得出的。通过两个步骤获得SLACC:(ⅰ)计算坡度斑块与定义的周围区域之间的相关性,以及(ⅱ)识别每个邻域的相关性的特征长度。可以使用称为峰的二阶导数或Spc的表面度量标准来测量SLLAC贴图纹理。在本研究中,我们针对两种景观测试了该算法:地中海景观和高山景观。研究方法涉及对真实LiDAR DTM和模拟LiDAR DTM的检查,从而可以控制平台形状和平台覆盖面积的百分比。结果表明,SLLAC贴图对自然表面表现出随机的外观。相反,梯田景观表现出较高的有序度,并且这种行为与形态背景和梯田系统无关。这项工作的结果还证明,在调查区域内,随着平台表面面积的增加,Spc值会降低:平台区域的Spc与自然景观的Spc明显不同。在自然形态平滑的区域,Spc可以识别梯田覆盖的梯田区域,梯田区域的最低高度范围至少为20%。相反,在陡峭的形态和垂直的悬崖区域,当梯田覆盖至少50%的被调查表面时,该算法效果很好。考虑到梯田景观的重要性日益增加,建议的程序为梯田场地空间异质性的探索提供了重要而有前途的工具。

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