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Main Authors: Gong, Yue, Liu, Shanyuan, Li, Liuzhuozheng, Zhu, Jian, Cheng, Bo, Wu, Liebucha, Wu, Xiaoyu, Ma, Yuhang, Leng, Dawei, Yin, Yuhui
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.14405
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author Gong, Yue
Liu, Shanyuan
Li, Liuzhuozheng
Zhu, Jian
Cheng, Bo
Wu, Liebucha
Wu, Xiaoyu
Ma, Yuhang
Leng, Dawei
Yin, Yuhui
author_facet Gong, Yue
Liu, Shanyuan
Li, Liuzhuozheng
Zhu, Jian
Cheng, Bo
Wu, Liebucha
Wu, Xiaoyu
Ma, Yuhang
Leng, Dawei
Yin, Yuhui
contents We proposed the Chinese Text Adapter-Flux (CTA-Flux). An adaptation method fits the Chinese text inputs to Flux, a powerful text-to-image (TTI) generative model initially trained on the English corpus. Despite the notable image generation ability conditioned on English text inputs, Flux performs poorly when processing non-English prompts, particularly due to linguistic and cultural biases inherent in predominantly English-centric training datasets. Existing approaches, such as translating non-English prompts into English or finetuning models for bilingual mappings, inadequately address culturally specific semantics, compromising image authenticity and quality. To address this issue, we introduce a novel method to bridge Chinese semantic understanding with compatibility in English-centric TTI model communities. Existing approaches relying on ControlNet-like architectures typically require a massive parameter scale and lack direct control over Chinese semantics. In comparison, CTA-flux leverages MultiModal Diffusion Transformer (MMDiT) to control the Flux backbone directly, significantly reducing the number of parameters while enhancing the model's understanding of Chinese semantics. This integration significantly improves the generation quality and cultural authenticity without extensive retraining of the entire model, thus maintaining compatibility with existing text-to-image plugins such as LoRA, IP-Adapter, and ControlNet. Empirical evaluations demonstrate that CTA-flux supports Chinese and English prompts and achieves superior image generation quality, visual realism, and faithful depiction of Chinese semantics.
format Preprint
id arxiv_https___arxiv_org_abs_2508_14405
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle CTA-Flux: Integrating Chinese Cultural Semantics into High-Quality English Text-to-Image Communities
Gong, Yue
Liu, Shanyuan
Li, Liuzhuozheng
Zhu, Jian
Cheng, Bo
Wu, Liebucha
Wu, Xiaoyu
Ma, Yuhang
Leng, Dawei
Yin, Yuhui
Computer Vision and Pattern Recognition
We proposed the Chinese Text Adapter-Flux (CTA-Flux). An adaptation method fits the Chinese text inputs to Flux, a powerful text-to-image (TTI) generative model initially trained on the English corpus. Despite the notable image generation ability conditioned on English text inputs, Flux performs poorly when processing non-English prompts, particularly due to linguistic and cultural biases inherent in predominantly English-centric training datasets. Existing approaches, such as translating non-English prompts into English or finetuning models for bilingual mappings, inadequately address culturally specific semantics, compromising image authenticity and quality. To address this issue, we introduce a novel method to bridge Chinese semantic understanding with compatibility in English-centric TTI model communities. Existing approaches relying on ControlNet-like architectures typically require a massive parameter scale and lack direct control over Chinese semantics. In comparison, CTA-flux leverages MultiModal Diffusion Transformer (MMDiT) to control the Flux backbone directly, significantly reducing the number of parameters while enhancing the model's understanding of Chinese semantics. This integration significantly improves the generation quality and cultural authenticity without extensive retraining of the entire model, thus maintaining compatibility with existing text-to-image plugins such as LoRA, IP-Adapter, and ControlNet. Empirical evaluations demonstrate that CTA-flux supports Chinese and English prompts and achieves superior image generation quality, visual realism, and faithful depiction of Chinese semantics.
title CTA-Flux: Integrating Chinese Cultural Semantics into High-Quality English Text-to-Image Communities
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2508.14405