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Gradually Vanishing Bridge for Adversarial Domain Adaptation

机译:对抗域适应的逐渐消失的桥梁

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In unsupervised domain adaptation, rich domain-specific characteristics bring great challenge to learn domain-invariant representations. However, domain discrepancy is considered to be directly minimized in existing solutions, which is difficult to achieve in practice. Some methods alleviate the difficulty by explicitly modeling domain-invariant and domain-specific parts in the representations, but the adverse influence of the explicit construction lies in the residual domain-specific characteristics in the constructed domain-invariant representations. In this paper, we equip adversarial domain adaptation with Gradually Vanishing Bridge (GVB) mechanism on both generator and discriminator. On the generator, GVB could not only reduce the overall transfer difficulty, but also reduce the influence of the residual domain-specific characteristics in domain-invariant representations. On the discriminator, GVB contributes to enhance the discriminating ability, and balance the adversarial training process. Experiments on three challenging datasets show that our GVB methods outperform strong competitors, and cooperate well with other adversarial methods. The code is available at https://github.com/cuishuhao/GVB.
机译:在无监督的领域适应中,丰富的领域特定特征给学习领域不变表示带来了巨大挑战。但是,在现有解决方案中,将域差异视为直接最小化,这在实践中很难实现。一些方法通过对表示中的领域不变和领域特定部分进行显式建模来减轻难度,但是显式构造的不利影响在于所构造的领域不变表示中的剩余领域特定特征。在本文中,我们在生成器和鉴别器上都装备了逐渐消失的桥(GVB)机制来对抗域自适应。在生成器上,GVB不仅可以降低总体传输难度,而且可以减少域不变表示中残留的特定于域的特性的影响。在鉴别器上,GVB有助于增强鉴别能力,并平衡对抗训练过程。在三个具有挑战性的数据集上进行的实验表明,我们的GVB方法优于强大的竞争对手,并且可以与其他对抗方法很好地协作。该代码位于https://github.com/cuishuhao/GVB。

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