首页> 外文期刊>Photogrammetric Engineering & Remote Sensing: Journal of the American Society of Photogrammetry >Subpixel urban land cover estimation: comparing cubist, random forests, and support vector regression. (Special issue: Artificial intelligence in remote sensing.)
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Subpixel urban land cover estimation: comparing cubist, random forests, and support vector regression. (Special issue: Artificial intelligence in remote sensing.)

机译:亚像素城市土地覆盖率估算:比较立体森林,随机森林和支持向量回归。 (特刊:遥感中的人工智能。)

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摘要

Three machine learning subpixel estimation methods (Cubist, Random Forests, and support vector regression) were applied to estimate urban cover. Urban forest canopy cover and impervious surface cover were estimated from Landsat-7 ETM+ imagery using a higher resolution cover map resampled to 30 m as training and reference data. Three different band combinations (reflectance, tasseled cap, and both reflectance and tasseled cap plus thermal) were compared for their effectiveness with each of the methods. Thirty different training site number and size combinations were also tested. Support vector regression on the tasseled cap bands was found to be the best estimator for urban forest canopy cover, while Cubist performed best using the reflectance plus tasseled cap band combination when predicting impervious surface cover. More training data partitioned in many small training sites generally produces better estimation results.
机译:三种机器学习亚像素估计方法(立体主义,随机森林和支持向量回归)用于估计城市覆盖率。根据Landsat-7 ETM +图像,使用重新采样至30 m的更高分辨率的覆盖图作为训练和参考数据,估算了城市森林的冠层覆盖度和不透水的表面覆盖度。使用每种方法比较了三种不同的波段组合(反射率,流苏帽和反射率与流苏帽加上热)的有效性。还测试了三十种不同的培训站点数量和大小组合。发现流苏盖带上的支持向量回归是城市森林冠层覆盖率的最佳估计,而立体派使用反射率加上流苏盖带组合来预测不透水地表覆盖时表现最佳。在许多小型培训站点中划分的更多培训数据通常会产生更好的估计结果。

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