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Modification of the random forest algorithm to avoid statistical dependence problems when classifying remote sensing imagery

机译:修改随机森林算法以避免分类遥感影像时出现统计依赖性问题

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摘要

Random forest is a classification technique widely used in remote sensing. One of its advantages is that it produces an estimation of classification accuracy based on the so called out-of-bag cross-validation method. It is usually assumed that such estimation is not biased and may be used instead of validation based on an external data-set or a cross-validation external to the algorithm.
机译:随机森林是一种广泛用于遥感的分类技术。它的优点之一是,它基于所谓的“袋外交叉验证”方法产生对分类准确性的估计。通常假定这种估计没有偏差,可以代替基于外部数据集的验证或算法外部的交叉验证而使用。

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