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PRISM: Progressive Restoration for Scene Graph-Based Image Manipulation

MCML Authors

Abstract

Scene graphs have emerged as accurate semantic descriptions for image generation and manipulation tasks; however, their complexity and diversity of the shapes and relations of objects in data make it challenging to incorporate them into the models and generate high-quality results. To address these challenges, we propose PRISM, a novel progressive multi-head image manipulation approach to improve the accuracy of the manipulation of target regions in the scene. Our image manipulation framework is trained using an end-to-end denoising masked reconstruction proxy task, where the masked regions are progressively unmasked from the outer regions to the inner part. We take advantage of the outer part of the masked area as they have a direct correlation with the context of the scene. Moreover, our multi-head architecture simultaneously generates detailed object-specific regions in addition to the entire image to produce higher-quality images. Our model is evaluated against methods in the semantic image manipulation task on the CLEVR and Visual Genome datasets. Our results demonstrate the potential of our approach for enhancing the quality and precision of scene graph-based image manipulation.

inproceedings


Workshop @ECCV 2024

Computer Vision Workshop at the 18th European Conference on Computer Vision. Milano, Italy, Sep 29-Oct 04, 2024.

Authors

P. Jahoda • Y. Yeganeh • E. Adeli • N. NavabA. Farshad

Links

DOI

Research Area

 C1 | Medicine

BibTeXKey: JYA+24

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