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Land cover dynamics monitoring with Landsat data in Kunming, China: a cost-effective sampling and modelling scheme using Google Earth imagery and random forests

机译:利用中国昆明市的Landsat数据进行土地覆盖动态监测:使用Google Earth图像和随机森林的经济高效采样和建模方案

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摘要

Changes in forest composition impact ecological services, and are considered important factors driving global climate change. A hybrid sampling method along with a modelling approach to map current and past land cover in Kunming, China is reported. MODIS land cover (2001-2011) data-sets were used to detect pixels with no apparent change. Around 3000 'no change points' were systematically selected and sampled using Google Earth's high-resolution imagery. Thirty-five per cent of these points were verified and used for training and validation. We used Random forests to classify multi-temporal Landsat imagery. Results show that forest cover has had a net decrease of 14385 ha (1.3% of forest area), which was primary converted to shrublands (11%), urban and barren land (2.7%) and agriculture (2.5%). Our validation indicates an overall accuracy (Kappa) of 82%. Our methodology can be used to consistently map the dynamics of land cover change in similar areas with minimum costs.
机译:森林组成的变化影响生态服务,被认为是驱动全球气候变化的重要因素。报告了一种混合采样方法和一种建模方法,可绘制中国昆明市目前和过去的土地覆盖图。 MODIS土地覆盖(2001-2011)数据集用于检测没有明显变化的像素。使用Google Earth的高分辨率图像系统地选择了大约3000个“不变点”并进行了采样。这些点的百分之三十五已得到核实,并用于培训和确认。我们使用随机森林对多时态Landsat影像进行分类。结果表明,森林覆盖净减少了14385公顷(占森林面积的1.3%),主要转变为灌木丛(11%),城市和贫瘠的土地(2.7%)和农业(2.5%)。我们的验证表明总体准确性(Kappa)为82%。我们的方法可用于以最小的成本一致地绘制相似区域的土地覆盖变化动态。

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