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π Compositional Learning Journal Club
Join us this week for an in-depth discussion on Compositional Learning in the context of cutting-edge text-to-image generative models. We will explore recent breakthroughs and challenges, focusing on how these models handle compositional tasks and where improvements can be made.
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This Week's Presentation:
πΉ Title: Correcting Diffusion Generation through Resampling
πΈ Presenter: Ali Aghayari
π Abstract:
This paper addresses distributional discrepancies in diffusion models, which cause missing objects in text-to-image generation and reduced image quality. Existing methods overlook this root issue, leading to suboptimal results. The authors propose a particle filtering framework that uses real images and a pre-trained object detector to measure and correct these discrepancies through resampling. Their approach improves object occurrence by 5% and FID by 1.0 on MS-COCO, outperforming previous methods in generating more accurate and higher-quality images.
π Papers: Correcting Diffusion Generation through Resampling
Session Details:
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Date: Tuesday
- π Time: 5:30 - 6:30 PM
- π Location: Online at vc.sharif.edu/ch/rohban
We look forward to your participation! βοΈ
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