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Weakly Supervised Domain Adaptation using Super-pixel labeling for Semantic Segmentation

机译:使用超像素标记进行语义分割的弱域域适应

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Deep learning for semantic segmentation requires a large amount of labeled data, but manually annotating images are very expensive and time consuming. To overcome the limitation, unsupervised domain adaptation methods adapt a segmentation model trained on a labeled source domain (synthetic data) to an unlabeled target domain (real-world scenes). However, the unsupervised methods have a poor performance than the supervised methods with target domain labels. In this paper, we propose a novel weakly supervised domain adaptation using super-pixel labeling for semantic segmentation. The proposed method reduces annotation cost by estimating a suitable labeling area calculated from the Entropy-based cost of a previously learned segmentation model. In addition, we generate the new pseudo-labels by applying fully connected Conditional Random Field model over the pseudo-labels obtained using an unsupervised domain adaptation. We show that our proposed method is a powerful approach for reducing annotation cost.
机译:对语义分割的深度学习需要大量标记数据,但是手动注释图像非常昂贵且耗时。为了克服限制,无监督域适应方法适应在标记的源域(合成数据)上培训的分段模型到未标记的目标域(现实世界场景)。然而,无监督的方法比具有目标域标签的监督方法具有差的性能。在本文中,我们使用超像素标记进行语义分割提出了一种新的弱监管域适应。所提出的方法通过估计由先前学习的分割模型的基于熵的成本计算的合适标记区域来减少注释成本。此外,我们通过在使用无监督域自适应获得的伪标签上应用完全连接的条件随机字段模型来生成新的伪标签。我们表明,我们提出的方法是降低注释成本的强大方法。

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