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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing. >DAugNet: Unsupervised, Multisource, Multitarget, and Life-Long Domain Adaptation for Semantic Segmentation of Satellite Images
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DAugNet: Unsupervised, Multisource, Multitarget, and Life-Long Domain Adaptation for Semantic Segmentation of Satellite Images

机译:Daugnet:无监督,多源,多重价和卫星图像语义分割的终身域适应

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摘要

The domain adaptation of satellite images has recently gained increasing attention to overcome the limited generalization abilities of machine learning models when segmenting large-scale satellite images. Most of the existing approaches seek for adapting the model from one domain to another. However, such single-source and single-target setting prevents the methods from being scalable solutions since, nowadays, multiple sources and target domains having different data distributions are usually available. Besides, the continuous proliferation of satellite images necessitates the classifiers to adapt to continuously increasing data. We propose a novel approach, coined DAugNet, for unsupervised, multisource, multitarget, and life-long domain adaptation of satellite images. It consists of a classifier and a data augmentor. The data augmentor, which is a shallow network, is able to perform style transfer between multiple satellite images in an unsupervised manner, even when new data are added over time. In each training iteration, it provides the classifier with diversified data, which makes the classifier robust to large data distribution difference between the domains. Our extensive experiments prove that DAugNet significantly better generalizes to new geographic locations than the existing approaches.
机译:卫星图像的域改性最近在分割大规模卫星图像时克服机器学习模型的有限概括能力越来越受到关注。大多数现有方法都寻求将模型从一个域调整到另一个域。然而,这种单源和单目标设置可以防止方法是可扩展的解决方案,因为现在,具有不同数据分布的多个源和目标域通常可用。此外,卫星图像的连续增殖需要进行分类器,以适应连续增加的数据。我们提出了一种新的方法,为卫星图像的无监督,多源,多价和终身域改编而创建Daugnet。它由分类器和数据增强器组成。作为浅网络的数据增强器,即使在随着时间的推移时,也能够以无监督的方式在多卫星图像之间进行样式传输。在每个训练迭代中,它提供了具有多样化数据的分类器,这使得分类器使域之间的大数据分布差差异。我们广泛的实验证明了Daugnet明显更好地推广到新的地理位置而不是现有的方法。

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