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Raster images generalization in the context of research on the structure of landscape and geodiversity

机译:在景观和地理多样性结构研究中进行栅格图像概括

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摘要

Generalization is one of the most important stages of work on cartographic data. It has a particular importance in the study of landscape structure, especially geodiversity. In raster images, it is based on modifying the structure of the image while maintaining its general characteristics. In ArcGIS software, the most important tools for generalization of raster images include: Boundary Clean and Majority Filter. Fragstat software was used for the analysis of structural modifications of the output images and assessment of the effects of generalization. Depending on the options used, both tools (Boundary Clean and Majority Filter) cause different types of modifications in rasters. Elimination of the so-called noise using one of the variants of Majority Filter is the most suitable if we wish to introduce only subtle modifications to the final image. If, however, we expect a greater level of interference in the structure of the source images, using Boundary Clean becomes necessary.
机译:概化是制图数据工作中最重要的阶段之一。它在景观结构特别是地理多样性研究中具有特别重要的意义。在光栅图像中,它基于修改图像结构的同时保持其一般特性。在ArcGIS软件中,最通用的栅格图像工具包括:边界清洁和多数过滤器。 Fragstat软件用于分析输出图像的结构修改并评估泛化效果。根据使用的选项,两种工具(边界清洁和多数过滤器)都会导致栅格中的修改类型不同。如果我们只想对最终图像进行细微的修改,则使用多数滤波器的一种变型来消除所谓的噪声最为合适。但是,如果我们希望对源图像的结构产生更大程度的干扰,则必须使用“边界清理”。

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