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Unsupervised Adversarial Domain Adaptation Network for Semantic Segmentation

机译:用于语义分割的无监督的对抗域适应网络

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摘要

With the rapid development of deep learning technology, semantic segmentation methods have been widely used in remote sensing data. A pretrained semantic segmentation model usually cannot perform well when the testing images (target domain) have an obvious difference from the training data set (source domain), while a large enough labeled data set is almost impossible to be acquired for each scenario. Unsupervised domain adaptation (DA) techniques aim to transfer knowledge learned from the source domain to a totally unlabeled target domain. By reducing the domain shift, DA methods have shown the ability to improve the classification accuracy for the target domain. Hence, in this letter, we propose an unsupervised adversarial DA network that converts deep features into 2-D feature curves and reduces the discrepancy between curves from the source domain and curves from the target domain based on a conditional generative adversarial networks (cGANs) model. Our proposed DA network is able to improve the semantic labeling accuracy when we apply a pretrained semantic segmentation model to the target domain. To test the effectiveness of the proposed method, experiments are conducted on the International Society for Photogrammetry and Remote Sensing (ISPRS) 2-D Semantic Labeling data set. Results show that our proposed network is able to stably improve overall accuracy not only when the source and target domains are from the same city but with different building styles but also when the source and target domains are from different cities and acquired by different sensors. By comparing with a few state-of-the-art DA methods, we demonstrate that our proposed method achieves the best cross-domain semantic segmentation performance.
机译:随着深度学习技术的快速发展,语义分割方法已广泛用于遥感数据。当测试图像(目标域)与训练数据集(源域)具有明显的差异时,预磨平的语义分割模型通常不能表现良好,而对于每个场景,几乎不可能获取大足够大的标记数据集。无监督域适应(DA)技术旨在将从源域中学习的知识转移到完全未标记的目标域。通过减少域移位,DA方法显示了提高目标域的分类精度的能力。因此,在这封信中,我们提出了一个无人监督的对手DA网络,它将深度特征转换为2-D特征曲线,并根据条件生成对冲网络(CGANS)模型从源域和从目标域曲线缩小曲线之间的差异。当我们向目标域应用备用语义分段模型时,我们所提出的DA网络能够提高语义标记精度。为了测试所提出的方法的有效性,对国际摄影测量和遥感(ISPRS)2-D语义标记数据集进行的实验。结果表明,我们的建议网络不仅能够稳定地提高整体准确性,而不是当源域和目标域来自同一城市而是具有不同的建筑物样式,而且当源和目标域来自不同的城市并由不同的传感器获取时。通过与少数最先进的DA方法进行比较,我们证明我们的提出方法实现了最佳的跨域语义分割性能。

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