Drag Your GAN: Interactive Point

您所在的位置:网站首页 g-nettrack下载 Drag Your GAN: Interactive Point

Drag Your GAN: Interactive Point

2023-05-21 14:04| 来源: 网络整理| 查看: 265

Drag Your GAN: Interactive Point-based Manipulation on the Generative Image Manifold Xingang Pan 1,2   Ayush Tewari 3   Thomas Leimk眉hler 1   Lingjie Liu 1,4   Abhimitra Meka 5   Christian Theobalt 1,2   1Max Planck Institute for Informatics   2Saarbr眉cken Research Center for Visual Computing, Interaction and AI   3MIT   4University of Pennsylvania   5Google AR/VR   SIGGRAPH 2023 Conference Proceedings Abstract

Synthesizing visual content that meets users' needs often requires flexible and precise controllability of the pose, shape, expression, and layout of the generated objects. Existing approaches gain controllability of generative adversarial networks (GANs) via manually annotated training data or a prior 3D model, which often lack flexibility, precision, and generality. In this work, we study a powerful yet much less explored way of controlling GANs, that is, to "drag" any points of the image to precisely reach target points in a user-interactive manner, as shown in Fig.1. To achieve this, we propose DragGAN, which consists of two main components including: 1) a feature-based motion supervision that drives the handle point to move towards the target position, and 2) a new point tracking approach that leverages the discriminative GAN features to keep localizing the position of the handle points. Through DragGAN, anyone can deform an image with precise control over where pixels go, thus manipulating the pose, shape, expression, and layout of diverse categories such as animals, cars, humans, landscapes, etc. As these manipulations are performed on the learned generative image manifold of a GAN, they tend to produce realistic outputs even for challenging scenarios such as hallucinating occluded content and deforming shapes that consistently follow the object's rigidity. Both qualitative and quantitative comparisons demonstrate the advantage of DragGAN over prior approaches in the tasks of image manipulation and point tracking. We also showcase the manipulation of real images through GAN inversion.

Main demo (accelerated) Lion Cat Dog Horse Elephant Face Human Car Microscope Landscapes Real image Downloads Paper

Code Citation @inproceedings{pan2023_DragGAN, title={Drag Your GAN: Interactive Point-based Manipulation on the Generative Image Manifold}, author={Pan, Xingang and Tewari, Ayush, and Leimk眉hler, Thomas and Liu, Lingjie and Meka, Abhimitra and Theobalt, Christian}, booktitle = {ACM SIGGRAPH 2023 Conference Proceedings}, year={2023} } Acknowledgments

This work was supported by ERC Consolidator Grant 4DReply (770784). Lingjie Liu was supported by Lise Meitner Postdoctoral Fellowship. This project was also supported by Saarbr眉cken Research Center for Visual Computing, Interaction and AI.

Contact For questions and clarifications please get in touch with: Xingang Pan [email protected] This page is Zotero translator friendly. Page last updated Imprint. Data Protection.


【本文地址】


今日新闻


推荐新闻


CopyRight 2018-2019 办公设备维修网 版权所有 豫ICP备15022753号-3