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Adversarial transfer learning for cross-domain visual recognition

机译:跨领域视觉识别的对抗转移学习

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In many practical visual recognition scenarios, feature distributions between source domain and the target domain are quite different, which results in the emergence of general cross-domain visual recognition problems. To address the problems of visual domain mismatch, we propose a novel shallow semi-supervised adversarial transfer learning network, which is called Coupled adversarial transfer Domain Adaptation (CatDA), for distribution alignment between two domains. The proposed CatDA approach is inspired by cycleGAN, but leveraging multiple shallow multilayer perceptrons (MLPs) instead of deep networks. Specifically, our CatDA comprises of two symmetric and slim sub-networks, such that the coupled adversarial learning framework is formulated. With such symmetry of two generators, the input data from source/target domain can be fed into the MLP network for target/source domain generation, supervised by two confrontation oriented coupled discriminators. Notably, in order to avoid the critical flaw of high-capacity of the feature extraction function during domain adversarial training, domain specific loss and domain knowledge fidelity loss are proposed in each generator, such that the effectiveness of the proposed transfer network is guaranteed. Additionally, the essential difference from cycleGAN is that our method aims to generate domain-agnostic and aligned features for domain adaptation and transfer learning rather than synthesize realistic images. We show experimentally on a number of benchmark datasets and the proposed approach achieves competitive performance over state-of-the-art domain adaptation and transfer learning approaches. (C) 2020 Elsevier B.V. All rights reserved.
机译:在许多实际的视觉识别方案中,源域和目标域之间的特征分布是完全不同的,这导致通用跨域视觉识别问题的出现。为了解决视域不匹配的问题,我们提出了一种新颖的浅半监督逆势转移学习网络,其称为耦合的对抗域转移域适应(Catda),用于两个域之间的分布对准。拟议的Catda方法是通过Crycangan的启发,但利用多个浅多层感知(MLP)而不是深网络。具体地,我们的CATDA包括两个对称和纤薄的子网,使得配制耦合的对抗性学习框架。利用两个生成器的这种对称性,可以将来自源/目标域的输入数据馈入用于目标/源域生成的MLP网络,由两个对抗定向耦合判别器监督。值得注意的是,为了避免在域对抗训练期间特征提取功能的高容量的临界缺陷,在每个发电机中提出了域特定损失和域知识保真损失,从而保证了所提出的转移网络的有效性。此外,来自Conscangan的基本差异是我们的方法旨在为域适应和转移学习而不是合成现实图像来生成域名不可行和对齐的特征。我们在实验上显示了许多基准数据集,所提出的方法实现了最先进的域适应和转移学习方法的竞争性能。 (c)2020 Elsevier B.v.保留所有权利。

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