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An Open Set Domain Adaptation Network Based on Adversarial Learning for Remote Sensing Image Scene Classification

机译:基于对抗探测图像场景分类的对抗学习的开放式域自适应网络

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Remote sensing image scene classification refers to assigning specific semantic labels for remote sensing images. Due to the lack of labeled remote sensing images, domain adaptation is applied to remote sensing image scene classification. However, recent proposed methods mainly focus on the closed set scenario. In this paper, we explore the open set scenario and introduce an open set domain adaptation network (OSDANet) for remote sensing image scene classification. Inspired by the idea of Generative Adversarial Network (GAN), we design a feature generator as well as a classifier which are learnt in an adversarial way. The purpose of the classifier is to find a boundary between the source and the target samples, while the feature generator attempts to force target samples away from the boundary. Especially, for the target samples, the feature generator will determine whether to align them with source samples or reject them as unknown target samples. The experimental results have indicated the effectiveness of the proposed method.
机译:遥感图像场景分类是指为遥感图像分配特定的语义标签。由于缺乏标记的遥感图像,域适应应用于遥感图像场景分类。然而,最近的建议方法主要关注封闭式方案。在本文中,我们探索了开放式场景,并为遥感图像场景分类引入开放式域适配网络(OSDanet)。灵感来自生成的对抗网络(GaN)的想法,我们设计了一种特征发生器以及以普发的方式学习的分类器。分类器的目的是在源和目标样本之间找到边界,而特征生成器试图强制远离边界的目标样本。特别是,对于目标样本,特征发生器将确定是否将它们与源样本对齐或将其拒绝为未知的目标样本。实验结果表明了该方法的有效性。

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