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Regularizing Discriminative Capability of CGANs for Semi-Supervised Generative Learning

机译:正则化CGAN的判别能力用于半监督式生成学习

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Semi-supervised generative learning aims to learn the underlying class-conditional distribution of partially labeled data. Generative Adversarial Networks (GANs) have led to promising progress in this task. However, it still needs to further explore the issue of imbalance between real labeled data and fake data in the adversarial learning process. To address this issue, we propose a regularization technique based on Random Regional Replacement (R$^3$-regularization) to facilitate the generative learning process. Specifically, we construct two types of between-class instances: cross-category ones and real-fake ones. These instances could be closer to the decision boundaries and are important for regularizing the classification and discriminative networks in our class-conditional GANs, which we refer to as R$^3$-CGAN. Better guidance from these two networks makes the generative network produce instances with class-specific information and high fidelity. We experiment with multiple standard benchmarks, and demonstrate that the R$^3$-regularization can lead to significant improvement in both classification and class-conditional image synthesis.
机译:半监督式生成学习旨在学习部分标记数据的基础类条件分布。生成对抗网络(GANs)已在这项任务中取得了可喜的进展。但是,在对抗学习过程中,仍然需要进一步探索真实标签数据和伪造数据之间的不平衡问题。为了解决这个问题,我们提出了一种基于随机区域替换(R $ ^ 3 $-正则化)的正则化技术,以促进生成学习过程。具体来说,我们构造了两种类型的类间实例:跨类实例和真实实例。这些实例可能更接近决策边界,并且对于规范我们的类条件GAN中的分类和区分网络非常重要,我们将其称为R $ ^ 3 $ -CGAN。这两个网络的更好指导使生成网络可以生成具有类特定信息和高保真度的实例。我们使用多个标准基准进行了实验,并证明了R $ ^ 3 $-正则化可以显着改善分类和类条件图像合成。

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