首页> 外文期刊>Photogrammetric Engineering & Remote Sensing: Journal of the American Society of Photogrammetry >Applying spatial autocorrelation analysis to evaluate error in New England forest-cover-type maps derived from Landsat Thematic Mapper data
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Applying spatial autocorrelation analysis to evaluate error in New England forest-cover-type maps derived from Landsat Thematic Mapper data

机译:应用空间自相关分析评估Landsat专题测绘仪数据得出的新英格兰森林覆盖类型地图的误差

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摘要

A spatial autocorrelation of error analysis was performed to compare the patterns of error in a classified Landsat Thematic Mapper (TM) forest-cover-type image for two forested areas--one public and one private. TM data were classified to generate adetailed forest type map, and intensive ground reference data covering approximately 3600 ha were collected for both study areas. Two difference images were produced by comparing the reference inventory with the classified data, pixel by pixel. The subsequent spatial autocorrelation analysis indicated that concentrated blocks of error were more pronounced in the public lands study area than in the private lands study area, where error was more evenly distributed. The results indicated that systematic sampling is not always suitable for assessing error in TM data.
机译:进行了空间误差自相关分析,以比较两个森林区域(一个公共区域和一个私有区域)的分类Landsat Thematic Mapper(TM)森林覆盖类型图像中的误差模式。对TM数据进行分类以生成详细的森林类型图,并为两个研究区域收集了约3600公顷的密集地面参考数据。通过将参考库存与分类数据逐像素进行比较,产生了两个差异图像。随后的空间自相关分析表明,集中误差区域在公共土地研究区域比在私人土地研究区域中更为明显,在私人土地研究区域中,误差分布更为均匀。结果表明,系统采样并不总是适合评估TM数据中的误差。

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