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Main Authors: Dao, Quan, Ta, Binh, Pham, Tung, Tran, Anh
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2311.17101
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author Dao, Quan
Ta, Binh
Pham, Tung
Tran, Anh
author_facet Dao, Quan
Ta, Binh
Pham, Tung
Tran, Anh
contents Developing image-generative models, which are robust to outliers in the training process, has recently drawn attention from the research community. Due to the ease of integrating unbalanced optimal transport (UOT) into adversarial framework, existing works focus mainly on developing robust frameworks for generative adversarial model (GAN). Meanwhile, diffusion models have recently dominated GAN in various tasks and datasets. However, according to our knowledge, none of them are robust to corrupted datasets. Motivated by DDGAN, our work introduces the first robust-to-outlier diffusion. We suggest replacing the UOT-based generative model for GAN in DDGAN to learn the backward diffusion process. Additionally, we demonstrate that the Lipschitz property of divergence in our framework contributes to more stable training convergence. Remarkably, our method not only exhibits robustness to corrupted datasets but also achieves superior performance on clean datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2311_17101
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle A High-Quality Robust Diffusion Framework for Corrupted Dataset
Dao, Quan
Ta, Binh
Pham, Tung
Tran, Anh
Computer Vision and Pattern Recognition
Developing image-generative models, which are robust to outliers in the training process, has recently drawn attention from the research community. Due to the ease of integrating unbalanced optimal transport (UOT) into adversarial framework, existing works focus mainly on developing robust frameworks for generative adversarial model (GAN). Meanwhile, diffusion models have recently dominated GAN in various tasks and datasets. However, according to our knowledge, none of them are robust to corrupted datasets. Motivated by DDGAN, our work introduces the first robust-to-outlier diffusion. We suggest replacing the UOT-based generative model for GAN in DDGAN to learn the backward diffusion process. Additionally, we demonstrate that the Lipschitz property of divergence in our framework contributes to more stable training convergence. Remarkably, our method not only exhibits robustness to corrupted datasets but also achieves superior performance on clean datasets.
title A High-Quality Robust Diffusion Framework for Corrupted Dataset
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2311.17101