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Domain adaptation based on deep denoising auto-encoders for classification of remote sensing images

机译:基于深度去噪自动编码器进行遥感图像分类的域改编

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This paper investigates the effectiveness of deep learning (DL) for domain adaptation (DA) problems in the classification of remote sensing images to generate land-cover maps. To this end, we introduce two different DL architectures: 1) single-stage domain adaptation (SS-DA) architecture; and 2) hierarchal domain adaptation (H-DA) architecture. Both architectures require that a reliable training set is available only for one of the images (i.e., the source domain) from a previous analysis, whereas it is not for another image to be classified (i.e., the target domain). To classify the target domain image, the proposed architectures aim to learn a shared feature representation that is invariant across the source and target domains in a completely unsupervised fashion. To this end, both architectures are defined based on the stacked denoising auto-encoders (SDAEs) due to their high capability to define high-level feature representations. The SS-DA architecture leads to a common feature space by: 1) initially unifying the samples in source and target domains; and 2) then feeding them simultaneously into the SDAE. To further increase the robustness of the shared representations, the H-DA employs: 1) two SDAEs for learning independently the high level representations of source and target domains; and 2) a consensus SDAE to learn the domain invariant high-level features. After obtaining the domain invariant features through proposed architectures, the classifier is trained by the domain invariant labeled samples of the source domain, and then the domain invariant samples of the target domain are classified to generate the related classification map. Experimental results obtained for the classification of very high resolution images confirm the effectiveness of the proposed DL architectures.
机译:本文调查了深度学习(DL)在遥感图像分类中的域适应(DA)问题的有效性,以生成陆地覆盖映射。为此,我们介绍了两个不同的DL架构:1)单级域适应(SS-DA)架构;和2)层次结构域适配(H-DA)架构。这两个架构都要求可靠的训练集仅适用于来自先前分析的图像(即源域)之一可用,而它不适用于分类的另一个图像(即,目标域)。为了对目标域图像进行分类,所提出的体系结构旨在学习以完全无监督的方式跨源和目标域中不变的共享特征表示。为此,由于它们的高能力来定义高电平特征表示,这两个架构都基于堆叠的去噪自动编码器(SDAE)来定义。 SS-DA架构将导致通用特征空间:1)最初统一源域和目标域中的样本; 2)然后将它们同时进入SDAE。为了进一步提高共享表示的稳健性,H-DA采用:1)两个SDAE用于学习的独立学习的源头和目标域的高级表示; 2)共识SDAE学习域不变的高级功能。通过所提出的架构获取域不变功能后,分类器由源域的域不变标记的样本训练,然后将目标域的域不变样本分类以生成相关的分类映射。获得非常高分辨率图像分类的实验结果证实了所提出的DL架构的有效性。

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