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Evaluation of tree creation methods within random forests for classification of PolSAR images

机译:评估随机林中的树木创建方法,用于POLSAR图像分类

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Random Forests and their many variations developed to one of the most successful instruments to automatically analyse image data. One of the most crucial parts is the definition and selection of node tests within the individual trees, which among other things allow for trade-offs between accuracy and computational load. This paper discusses several different approaches to test creation and compares them based on their classification performance on polarimetric synthetic aperture radar data. The experiments show that selecting the best out of multiple randomly generated node tests leads to the highest accuracy with the smallest computational effort.
机译:随机森林及其许多变化,用于自动分析图像数据的最成功的仪器之一。其中一个最重要的部分是各种树木内部测试的定义和选择,其中包括精度和计算负荷之间的权衡。本文讨论了几种不同的方法来测试创建,并根据其在极化合成孔径雷达数据上的分类性能进行比较。实验表明,选择最佳多个随机生成的节点测试导致最高的计算工作的最高精度。

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