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Automatic Land Cover Classification for Regional Area by an Improved Supervised Learning Procedure

机译:通过改进的监督学习程序自动土地覆盖区域地区的分类

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In the task of classification for remotely sensed imagery, it's always hard to get an automatic and accurate result. This paper proposed a supervised learning process for land cover classification. Feature learning and pattern learning are defined and combined for this classification process. First land cover features are extracted from many ancillary data, and object features are extracted from imagery. Then feature learning are adopted to select samples automatically. At last, a supervised classifier like decision trees is used to learn land cover pattern from these samples, and classify the imagery. In this process, all of the work are executed by machine. In the experiment, a SPOT5 imagery is used for land cover classification. The result shows that the proposed method classifies the remote sensing data with a high and stable accuracy.
机译:在遥感图像分类的任务中,始终难以获得自动和准确的结果。本文提出了陆地覆盖分类的监督学习过程。特征学习和模式学习是针对此分类过程的定义和组合。从许多辅助数据中提取第一块覆盖功能,并从图像中提取对象特征。然后采用特征学习来自动选择样本。最后,使用决策树的监督分类器用于从这些样本中学习土地覆盖模式,并对图像进行分类。在此过程中,所有工作都由机器执行。在实验中,Spot5图像用于陆地覆盖分类。结果表明,该方法以高且稳定的精度对遥感数据进行分类。

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