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Imbalanced Remote Sensing Ship Image Classification

机译:不平衡遥感船舶图像分类

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摘要

Aiming at the unbalanced classification problem of remote sensing ship image datasets in ship target classification and the problem that the traditional decision tree classification algorithm needs to rely on artificial construction features to realize classification, a weighted deep neural decision forest is proposed. This method combines deep learning with resampling. The results show that the method can achieve a better classification accuracy than the traditional decision tree on unbalanced classification of ship target.
机译:针对船舶目标分类中遥感船舶图像数据集的不平衡分类问题和传统决策树分类算法需要依赖于人工施工特征来实现分类的问题,提出了一种加权深神经决策林。 这种方法将深度学习与重采样相结合。 结果表明,该方法可以达到比传统决策树更好的分类精度,而不是船舶目标的不平衡分类。

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