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Multi-source Domain Adaptation for Semantic Segmentation

机译:多源域适应语义分割

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Simulation-to-real domain adaptation for semantic segmentation has been actively studied for various applications such as autonomous driving. Existing methods mainly focus on a single-source setting, which cannot easily handle a more practical scenario of multiple sources with different distributions. In this paper, we propose to investigate multi-source domain adaptation for semantic segmentation. Specifically, we design a novel framework, termed Multi-source Adversarial Domain Aggregation Network (MADAN), which can be trained in an end-to-end manner. First, we generate an adapted domain for each source with dynamic semantic consistency while aligning at the pixel-level cycle-consistently towards the target. Second, we propose sub-domain aggregation discriminator and cross-domain cycle discriminator to make different adapted domains more closely aggregated. Finally, feature-level alignment is performed between the aggregated domain and target domain while training the segmentation network. Extensive experiments from synthetic GTA and SYNTHIA to real Cityscapes and BDDS datasets demonstrate that the proposed MADAN model outperforms state-of-the-art approaches. Our source code is released at: https://github.com/Luodian/MADAN.
机译:针对自动驾驶等各种应用,已经积极研究了对语义分割的模拟 - 实际域改编。现有方法主要集中在单一源设置,这不能轻易处理具有不同分布的多个来源的更实际的场景。在本文中,我们建议调查语义分割的多源域适应。具体而言,我们设计一种新颖的框架,称为多源对抗域聚合网络(Madan),其可以以端到端的方式训练。首先,我们为每个源生成一个具有动态语义一致性的每个源的适配域,同时在像素级周期对齐朝向目标。其次,我们提出了子域聚合鉴别器和跨域周期判别器,使不同的适应域更加紧密地聚合。最后,在训练分段网络的同时在聚合域和目标域之间执行特征级别对准。来自合成GTA和Synthia的广泛实验到真实的城市景观和BDD数据集表明,拟议的Madan模型优于最先进的方法。我们的源代码是发布的:https://github.com/luodian/madan。

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