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Attention-Aware Generative Adversarial Networks (ATA-GANs)

机译:注意力感知的生成对抗网络(ATA-GAN)

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In this work, we present a novel approach for training Generative Adversarial Networks (GANs). Using the attention maps produced by a Teacher Network we are able to improve the quality of the generated images as well as perform weakly supervised object localization on the generated images. To this end, we generate images of HEp-2 cells captured with Indirect Imunofluoresence (IIF) and study the ability of our network to perform a weakly localization of the cell. First, we demonstrate that whilst GANs can learn the mapping between the input domain and the target distribution efficiently, the discriminator network is not able to detect the regions of interest. Second, we present a novel attention transfer mechanism which allows us to enforce the discriminator to put emphasis on the regions of interest via transfer learning. Third, we show that this leads to more realistic images, as the discriminator learns to put emphasis on the area of interest. Fourth, the proposed method allows one to generate both images as well as attention maps which can be useful for data annotation e.g in object detection.
机译:在这项工作中,我们提出了一种用于训练生成对抗网络(GAN)的新颖方法。使用教师网络生成的注意力图,我们可以提高生成图像的质量,并对生成图像执行弱监督的对象定位。为此,我们生成了用间接免疫荧光(IIF)捕获的HEp-2细胞的图像,并研究了我们的网络对细胞进行弱定位的能力。首先,我们证明,尽管GAN可以有效地学习输入域和目标分布之间的映射,但鉴别器网络无法检测到感兴趣的区域。其次,我们提出了一种新颖的注意力转移机制,该机制使我们能够通过转移学习来强制判别器将重点放在关注区域上。第三,我们证明,随着鉴别者学会着重关注的领域,这将导致更逼真的图像。第四,所提出的方法允许人们生成图像以及注意力图,这对于例如在对象检测中的数据注释可能是有用的。

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