Self-Supervised Domain-Aware Generative Network for Generalized Zero-Shot Learning

Jiamin Wu, Tianzhu Zhang, Zhengjun Zha, Jiebo Luo, Yongdong Zhang, Feng Wu
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引用次数: 35

Abstract

Generalized Zero-Shot Learning (GZSL) aims at recognizing both seen and unseen classes by constructing correspondence between visual and semantic embedding. However, existing methods have severely suffered from the strong bias problem, where unseen instances in target domain tend to be recognized as seen classes in source domain. To address this issue, we propose an end-to-end Self-supervised Domain-aware Generative Network (SDGN) by integrating self-supervised learning into feature generating model for unbiased GZSL. The proposed SDGN model enjoys several merits. First, we design a cross-domain feature generating module to synthesize samples with high fidelity based on class embeddings, which involves a novel target domain discriminator to preserve the domain consistency. Second, we propose a self-supervised learning module to investigate inter-domain relationships, where a set of anchors are introduced as a bridge between seen and unseen categories. In the shared space, we pull the distribution of target domain away from source domain, and obtain domain-aware features with high discriminative power for both seen and unseen classes. To our best knowledge, this is the first work to introduce self-supervised learning into GZSL as a learning guidance. Extensive experimental results on five standard benchmarks demonstrate that our model performs favorably against state-of-the-art GZSL methods.
广义零概率学习的自监督域感知生成网络
广义零次学习(GZSL)旨在通过构建视觉嵌入和语义嵌入之间的对应关系来识别可见类和不可见类。然而,现有的方法严重存在强偏差问题,即目标域中不可见的实例往往被识别为源域中可见的类。为了解决这一问题,我们将自监督学习集成到无偏GZSL的特征生成模型中,提出了端到端的自监督域感知生成网络(SDGN)。提出的SDGN模型有几个优点。首先,我们设计了一个基于类嵌入的跨域特征生成模块来合成高保真度的样本,该模块采用了一种新的目标域鉴别器来保持域的一致性。其次,我们提出了一个自监督学习模块来研究领域间的关系,其中引入了一组锚点作为可见和不可见类别之间的桥梁。在共享空间中,我们将目标域的分布拉离源域,得到对可见类和不可见类都具有高判别能力的领域感知特征。在五个标准基准上的广泛实验结果表明,我们的模型优于最先进的GZSL方法。
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