Deep neural advancements have recently brought remarkable image synthesis performance to the field of image inpainting. The adaptation of generative adversarial networks (GAN) in particular has accelerated significant progress in high-quality image reconstruction. However, although many notable GAN-based networks have been proposed for image inpainting, still pixel artifacts or color inconsistency occur in synthesized images during the generation process, which are usually called fake textures. To reduce pixel inconsistency disorder resulted from fake textures, we introduce a GAN-based model using dynamic attention map (DAM-GAN). Our proposed DAM-GAN concentrates on detecting fake texture and products dynamic attention maps to diminish pixel inconsistency from the feature maps in the generator. Evaluation results on CelebA-HQ and Places2 datasets with other image inpainting approaches show the superiority of our network.
翻译:深度神经进步最近将显著的图像合成性能带到图像油漆领域,特别是基因对抗网络(GAN)的改造加快了高质量图像重建的显著进展,然而,虽然许多以GAN为基础的显著网络被提议用于图像油漆,但在合成图像过程中仍然出现像素文物或颜色不一致现象,这些图像通常被称为假纹理。为了减少因假纹理造成的像素不一致性障碍,我们采用动态关注地图(DAM-GAN),采用了以GAN为基础的模型。我们提议的DAM-GAN集中探测假纹理和产品动态关注地图,以减少发电机地貌图中的像物不一致现象。CelebA-HQ和Places2数据集的评价结果与其他图像涂料方法显示了我们的网络的优势。