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ObjectStitch: Object Compositing with Diffusion Model

Yizhi Song, Zhifei Zhang, Zhe Lin, Scott Cohen, Brian Price, Jianming Zhang, Soo Ye Kim, Daniel G. Aliaga

202358 citationsDOI

Abstract

Object compositing based on 2D images is a challenging problem since it typically involves multiple processing stages such as color harmonization, geometry correction and shadow generation to generate realistic results. Furthermore, annotating training data pairs for compositing requires substantial manual effort from professionals, and is hardly scalable. Thus, with the recent advances in generative models, in this work, we propose a selfsupervised framework for object compositing by leveraging the power of conditional diffusion models. Our framework can hollistically address the object compositing task in a unified model, transforming the viewpoint, geometry, color and shadow of the generated object while requiring no manual labeling. To preserve the input object's characteristics, we introduce a content adaptor that helps to maintain categori-cal semantics and object appearance. A data augmentation method is further adopted to improve the fidelity of the generator. Our method outperforms relevant baselines in both realism and faithfulness of the synthesized result images in a user study on various real-world images.

Topics & Concepts

CompositingComputer scienceObject (grammar)Generator (circuit theory)Shadow (psychology)Computer visionArtificial intelligenceAutomatic summarizationSemantics (computer science)Computer graphics (images)Image (mathematics)Power (physics)Programming languagePsychotherapistPhysicsQuantum mechanicsPsychologyGenerative Adversarial Networks and Image SynthesisComputer Graphics and Visualization TechniquesImage Processing and 3D Reconstruction
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