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Main Authors: Zeng, Yu, Zhang, Yang, Liu, Jiachen, Shen, Linlin, Deng, Kaijun, He, Weizhao, Wang, Jinbao
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.21789
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author Zeng, Yu
Zhang, Yang
Liu, Jiachen
Shen, Linlin
Deng, Kaijun
He, Weizhao
Wang, Jinbao
author_facet Zeng, Yu
Zhang, Yang
Liu, Jiachen
Shen, Linlin
Deng, Kaijun
He, Weizhao
Wang, Jinbao
contents Hair editing is a critical image synthesis task that aims to edit hair color and hairstyle using text descriptions or reference images, while preserving irrelevant attributes (e.g., identity, background, cloth). Many existing methods are based on StyleGAN to address this task. However, due to the limited spatial distribution of StyleGAN, it struggles with multiple hair color editing and facial preservation. Considering the advancements in diffusion models, we utilize Latent Diffusion Models (LDMs) for hairstyle editing. Our approach introduces Multi-stage Hairstyle Blend (MHB), effectively separating control of hair color and hairstyle in diffusion latent space. Additionally, we train a warping module to align the hair color with the target region. To further enhance multi-color hairstyle editing, we fine-tuned a CLIP model using a multi-color hairstyle dataset. Our method not only tackles the complexity of multi-color hairstyles but also addresses the challenge of preserving original colors during diffusion editing. Extensive experiments showcase the superiority of our method in editing multi-color hairstyles while preserving facial attributes given textual descriptions and reference images.
format Preprint
id arxiv_https___arxiv_org_abs_2410_21789
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle HairDiffusion: Vivid Multi-Colored Hair Editing via Latent Diffusion
Zeng, Yu
Zhang, Yang
Liu, Jiachen
Shen, Linlin
Deng, Kaijun
He, Weizhao
Wang, Jinbao
Computer Vision and Pattern Recognition
Hair editing is a critical image synthesis task that aims to edit hair color and hairstyle using text descriptions or reference images, while preserving irrelevant attributes (e.g., identity, background, cloth). Many existing methods are based on StyleGAN to address this task. However, due to the limited spatial distribution of StyleGAN, it struggles with multiple hair color editing and facial preservation. Considering the advancements in diffusion models, we utilize Latent Diffusion Models (LDMs) for hairstyle editing. Our approach introduces Multi-stage Hairstyle Blend (MHB), effectively separating control of hair color and hairstyle in diffusion latent space. Additionally, we train a warping module to align the hair color with the target region. To further enhance multi-color hairstyle editing, we fine-tuned a CLIP model using a multi-color hairstyle dataset. Our method not only tackles the complexity of multi-color hairstyles but also addresses the challenge of preserving original colors during diffusion editing. Extensive experiments showcase the superiority of our method in editing multi-color hairstyles while preserving facial attributes given textual descriptions and reference images.
title HairDiffusion: Vivid Multi-Colored Hair Editing via Latent Diffusion
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2410.21789