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Semantic Image Inpainting with Deep Generative Models

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TLDR
A novel method for semantic image inpainting, which generates the missing content by conditioning on the available data, and successfully predicts information in large missing regions and achieves pixel-level photorealism, significantly outperforming the state-of-the-art methods.
Abstract
Semantic image inpainting is a challenging task where large missing regions have to be filled based on the available visual data. Existing methods which extract information from only a single image generally produce unsatisfactory results due to the lack of high level context. In this paper, we propose a novel method for semantic image inpainting, which generates the missing content by conditioning on the available data. Given a trained generative model, we search for the closest encoding of the corrupted image in the latent image manifold using our context and prior losses. This encoding is then passed through the generative model to infer the missing content. In our method, inference is possible irrespective of how the missing content is structured, while the state-of-the-art learning based method requires specific information about the holes in the training phase. Experiments on three datasets show that our method successfully predicts information in large missing regions and achieves pixel-level photorealism, significantly outperforming the state-of-the-art methods.

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Semi-Supervised Generative Adversarial Network for Gene Expression Inference

TL;DR: A novel semi-supervised deep generative model based on the generative adversarial network (GAN) to approximate the joint distribution of landmark and target genes, and an inference network to learn the conditional distribution of target genes given the landmark genes.
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Dynamic response reconstruction for structural health monitoring using densely connected convolutional networks

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MimicGAN: Robust Projection onto Image Manifolds with Corruption Mimicking

TL;DR: Corruption mimicking is proposed—a new robust projection technique that utilizes a surrogate network to approximate the unknown corruption directly at test time, without the need for additional supervision or data augmentation, thereby enabling a more effective use of GANs in real-world applications.
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Generate, Segment, and Refine: Towards Generic Manipulation Segmentation

TL;DR: A manipulated image generation process that creates true positives using currently available datasets is introduced, and a novel generator for creating examples that force the algorithm to focus on boundary artifacts during training is proposed.
Book ChapterDOI

Third Time's the Charm? Image and Video Editing with StyleGAN3

TL;DR: In this article , the authors explore the recent StyleGAN3 architecture, compare it to its predecessor, and investigate its unique advantages, as well as drawbacks, and propose an encoding scheme trained solely on aligned data, yet can still invert unaligned images.
References
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