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GAN Inversion for Out-of-Range Images with Geometric Transformations

Kyoungkook Kang, Seong‐Tae Kim, Sunghyun Cho

20212021 IEEE/CVF International Conference on Computer Vision (ICCV)58 citationsDOI

Abstract

For successful semantic editing of real images, it is critical for a GAN inversion method to find an in-domain latent code that aligns with the domain of a pre-trained GAN model. Unfortunately, such in-domain latent codes can be found only for in-range images that align with the training images of a GAN model. In this paper, we propose BDInvert, a novel GAN inversion approach to semantic editing of out- of-range images that are geometrically unaligned with the training images of a GAN model. To find a latent code that is semantically editable, BDInvert inverts an input out-of-range image into an alternative latent space than the original latent space. We also propose a regularized inversion method to find a solution that supports semantic editing in the alternative space. Our experiments show that BDInvert effectively supports semantic editing of out-of-range images with geometric transformations.

Topics & Concepts

Computer scienceInversion (geology)Latent semantic analysisRange (aeronautics)Semantic spaceCode (set theory)Artificial intelligenceDomain (mathematical analysis)Space (punctuation)Computer visionTheoretical computer scienceAlgorithmProgramming languageMathematicsGeologyMaterials scienceSet (abstract data type)Operating systemStructural basinPaleontologyComposite materialMathematical analysisGenerative Adversarial Networks and Image SynthesisAdvanced Vision and ImagingComputer Graphics and Visualization Techniques
GAN Inversion for Out-of-Range Images with Geometric Transformations | Litcius