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Class-Wise Adversarial Transfer Network for Remote Sensing Scene Classification

机译:用于遥感场景分类的类典型的对抗传输网络

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In this paper, we proposed a class-wise adversarial transfer network (CATN) for remote sensing scene classification. A class-wise discriminator is used to achieve conditional alignment on a per class basis. The CATN employs deep convolutional neural network to learn domain invariant classification layer features in a class-conditional manner. The classification probability output of the target data is utilized to determine the weights of the class adversarial losses. The proposed method can promote positive adaptation, and does not need labeled instances in the target domain. The experiments results using two remote scene image data sets with different resolution indicates its good performance.
机译:在本文中,我们提出了一种用于遥感场景分类的明智的对抗传输网络(CATN)。 Vis-Wise鉴别器用于在每个课程的基础上实现条件对齐。 CATN采用深度卷积神经网络以类条件方式学习域不变分类层特征。利用目标数据的分类概率输出来确定类侵犯损失的重量。所提出的方法可以促进阳性适应,并且在目标域中不需要标记的实例。实验结果使用具有不同分辨率的两个远程场景图像数据集表示其良好性能。

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