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Main Authors: Feng, Chengcheng, He, Mu, Tian, Qiuyu, Yin, Haojie, Zhao, Xiaofang, Tang, Hongwei, Wei, Xingqiang
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.11236
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author Feng, Chengcheng
He, Mu
Tian, Qiuyu
Yin, Haojie
Zhao, Xiaofang
Tang, Hongwei
Wei, Xingqiang
author_facet Feng, Chengcheng
He, Mu
Tian, Qiuyu
Yin, Haojie
Zhao, Xiaofang
Tang, Hongwei
Wei, Xingqiang
contents As deep learning technology continues to advance, image generation models, especially models like Stable Diffusion, are finding increasingly widespread application in visual arts creation. However, these models often face challenges such as overfitting, lack of stability in generated results, and difficulties in accurately capturing the features desired by creators during the fine-tuning process. In response to these challenges, we propose an innovative method that integrates Singular Value Decomposition (SVD) into the Low-Rank Adaptation (LoRA) parameter update strategy, aimed at enhancing the fine-tuning efficiency and output quality of image generation models. By incorporating SVD within the LoRA framework, our method not only effectively reduces the risk of overfitting but also enhances the stability of model outputs, and captures subtle, creator-desired feature adjustments more accurately. We evaluated our method on multiple datasets, and the results show that, compared to traditional fine-tuning methods, our approach significantly improves the model's generalization ability and creative flexibility while maintaining the quality of generation. Moreover, this method maintains LoRA's excellent performance under resource-constrained conditions, allowing for significant improvements in image generation quality without sacrificing the original efficiency and resource advantages.
format Preprint
id arxiv_https___arxiv_org_abs_2405_11236
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle TriLoRA: Integrating SVD for Advanced Style Personalization in Text-to-Image Generation
Feng, Chengcheng
He, Mu
Tian, Qiuyu
Yin, Haojie
Zhao, Xiaofang
Tang, Hongwei
Wei, Xingqiang
Computer Vision and Pattern Recognition
As deep learning technology continues to advance, image generation models, especially models like Stable Diffusion, are finding increasingly widespread application in visual arts creation. However, these models often face challenges such as overfitting, lack of stability in generated results, and difficulties in accurately capturing the features desired by creators during the fine-tuning process. In response to these challenges, we propose an innovative method that integrates Singular Value Decomposition (SVD) into the Low-Rank Adaptation (LoRA) parameter update strategy, aimed at enhancing the fine-tuning efficiency and output quality of image generation models. By incorporating SVD within the LoRA framework, our method not only effectively reduces the risk of overfitting but also enhances the stability of model outputs, and captures subtle, creator-desired feature adjustments more accurately. We evaluated our method on multiple datasets, and the results show that, compared to traditional fine-tuning methods, our approach significantly improves the model's generalization ability and creative flexibility while maintaining the quality of generation. Moreover, this method maintains LoRA's excellent performance under resource-constrained conditions, allowing for significant improvements in image generation quality without sacrificing the original efficiency and resource advantages.
title TriLoRA: Integrating SVD for Advanced Style Personalization in Text-to-Image Generation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2405.11236