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Using a sub-pixel mapping model to improve the accuracy of landscape pattern indices

机译:使用亚像素映射模型提高景观格局指数的准确性

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摘要

The assessment of landscape spatial patterns is a key issue in landscape management. Landscape pattern indices (LPIs) are tools appropriate for analyzing landscape spatial patterns. LPIs are often derived from raster land cover maps that are extracted from remotely sensed data through hard classification. However, pixel-based hard classification methods suffer from the mixed pixel problem (in which pixels contain more than one land cover class), making for inaccurate classification maps and LPIs. In addition, LPIs generated by hard classification methods are characterized by grain sizes (the sampling unit sizes) that limit the derived landscape pattern to a certain scale. Sub-pixel mapping (SPM) models can enable fine-scale estimation of the spatial patterns of land cover classes without requiring additional data; hence, this is an appropriate downscaling method for land cover mapping. The fraction images generated by soft classification estimate the area proportion of each land cover class within each pixel, and using these images as input enables SPM models to alleviate the mixed pixel problem. At the same time, by transforming fraction images into a finer-scaled hard classification map, SPM models can minimize the influence of grain size on LPIs calculation. In this research, simulated landscape thematic patterns that can provide different landscape spatial patterns, eight commonly used LPIs and a SPM model that maximizes the spatial dependence between neighbouring sub-pixels were applied to assess the efficiency of deriving LPIs from sub-pixel model maps. Results showed that the SPM model can more precisely characterize landscape patterns than hard classification methods can. Landscape fragmentation, class abundance, the uncertainty in SPM, and the spatial resolution of the remotely sensed data influenced LPIs derived from sub-pixel maps. The largest patch index, landscape division, and patch cohesion derived from remotely sensed data with different spatial resolutions through the SPM model were suitable for inter-comparison, whereas the patch density, mean patch area, edge density, landscape shape index, and area-weighted mean shape index derived from the sub-pixel maps were sensitive to the spatial resolution of the remotely sensed data.
机译:景观空间格局的评估是景观管理中的关键问题。景观格局指数(LPI)是适用于分析景观空间格局的工具。 LPI通常来自栅格土地覆盖图,这些地图是通过硬分类从遥感数据中提取的。但是,基于像素的硬分类方法会遇到混合像素问题(像素包含一个以上的土地覆被类别),从而导致分类图和LPI不准确。此外,通过硬分类方法生成的LPI的特征在于晶粒大小(采样单位大小),这些大小将派生的景观模式限制在一定范围内。亚像素映射(SPM)模型可以在不需要其他数据的情况下对土地覆盖类别的空间模式进行精细评估。因此,这是用于土地覆盖制图的一种适当的缩小比例方法。通过软分类生成的分数图像估计每个像素内每个土地覆被类别的面积比例,并且使用这些图像作为输入使SPM模型能够减轻混合像素问题。同时,通过将分数图像转换为更精细的硬分类图,SPM模型可以最大程度地减小晶粒尺寸对LPI计算的影响。在这项研究中,模拟的风景主题模式可以提供不同的风景空间模式,八个常用的LPI和一个SPM模型可以最大化相邻子像素之间的空间依赖性,以评估从子像素模型图得出LPI的效率。结果表明,与硬分类方法相比,SPM模型可以更精确地描述景观格局。景观碎片化,类别丰富度,SPM中的不确定性以及遥感数据的空间分辨率影响了从子像素图得出的LPI。通过SPM模型从具有不同空间分辨率的遥感数据中得出的最大斑块指数,景观划分和斑块内聚力适合进行内部比较,而斑块密度,平均斑块面积,边缘密度,景观形状指数和面积-从子像素图得出的加权平均形状指数对遥感数据的空间分辨率敏感。

著录项

  • 来源
    《Ecological indicators》 |2011年第5期|p.1160-1170|共11页
  • 作者单位

    Institute of Geodesy and Geophysics, Chinese Academy of Sciences, 340 Xudong Road, Wuhan, 430077, Hubei, China;

    Institute of Geodesy and Geophysics, Chinese Academy of Sciences, 340 Xudong Road, Wuhan, 430077, Hubei, China;

    Institute of Geodesy and Geophysics, Chinese Academy of Sciences, 340 Xudong Road, Wuhan, 430077, Hubei, China;

    Institute of Geodesy and Geophysics, Chinese Academy of Sciences, 340 Xudong Road, Wuhan, 430077, Hubei, China;

    Institute of Geodesy and Geophysics, Chinese Academy of Sciences, 340 Xudong Road, Wuhan, 430077, Hubei, China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    landscape spatial pattern; landscape pattern index; sub-pixel mapping; remotely sensed data; mixed pixel; grain size;

    机译:景观空间格局景观格局指数亚像素映射;遥感数据;混合像素晶粒大小;

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