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Multi-scale segmentation algorithm for pattern-based partitioning of large categorical rasters

机译:基于模式的大型分类栅格分割的多尺度分割算法

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Analyzing large Earth Observation (EO) data on the broad spatial scales frequently involves regionalization of patterns. To automate this process we present a segmentation algorithm designed specifically to delineate segments containing quasi-stationary patterns. The algorithm is designed to work with patterns of a categorical variable. This makes it possible to analyze very large spatial datasets (for example, a global land cover) in their entirety. An input categorical raster is first tessellated into small square tiles to form a new, coarser, grid of tiles. A mosaic of categories within each tile forms a local pattern, and the segmentation algorithm partitions the grid of tiles while maintaining the cohesion of pattern in each segment. The algorithm is based on the principle of seeded region growing (SRG) but it also includes segment merging and other enhancements to segmentation quality. Our key contribution is an extension of the concept of segmentation to grids in which each cell has a non-negligible size and contains a complex data structure (histograms of pattern features). Specific modification of a standard SRG algorithm include: working in a distance space with complex data objects, introducing six-connected "brick wall" topology of the grid to decrease artifacts associated with tessellation of geographical space, constructing the SRG priority queue of seeds on the basis of local homogeneity of patterns, and using a content-dependent value of segment-growing threshold. The detailed description of the algorithm is given followed by an assessment of its performance on test datasets representing three pertinent themes of land cover, topography, and a high-resolution image. Pattern-based segmentation algorithm will find application in ecology, forestry, geomorphology, land management, and agriculture. The algorithm is implemented as a module of GeoPAT - an already existing, open source toolbox for performing pattern-based analysis of categorical rasters.
机译:在广泛的空间尺度上分析大型地球观测(EO)数据通常涉及模式的区域化。为了使该过程自动化,我们提出了一种细分算法,专门设计用于描绘包含准平稳模式的细分。该算法被设计为使用分类变量的模式。这样就可以整体分析非常大的空间数据集(例如,全球土地覆盖)。首先将输入的分类栅格细分为小方块瓷砖,以形成新的,更粗糙的瓷砖网格。每个图块中的类别镶嵌形成局部图案,并且分割算法在保持每个段中的图案凝聚力的同时对图块网格进行分区。该算法基于种子区域增长(SRG)的原理,但它还包括片段合并以及对片段质量的其他增强。我们的主要贡献是将分割的概念扩展到了网格,在网格中,每个像元的大小不可忽略,并且包含复杂的数据结构(图案特征的直方图)。对标准SRG算法的特定修改包括:在具有复杂数据对象的远距离空间中工作;引入网格的六连接“砖墙”拓扑结构,以减少与地理空间细分相关的伪像;在SRG上构造种子的SRG优先级队列。模式的局部同质性的基础,并使用依赖于内容的段增长阈值。对该算法进行了详细说明,然后在代表三个相关主题的土地覆盖,地形和高分辨率图像的测试数据集上评估了其性能。基于模式的分割算法将在生态,林业,地貌,土地管理和农业中得到应用。该算法被实现为GeoPAT的模块-GeoPAT是一个已经存在的开源工具箱,用于对分类栅格执行基于模式的分析。

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