Bridge Diffusion Model: Bridge Chinese Text-to-Image Diffusion Model with English Communities
Shanyuan Liu, Bo Cheng, Yuhang Ma, Liebucha Wu, Ao Ma, Xiaoyu Wu, Dawei Leng, Yuhui Yin

TL;DR
The Bridge Diffusion Model (BDM) enables Chinese text-to-image generation that maintains compatibility with English TTI models, effectively bridging language biases and fostering cultural interaction.
Contribution
A novel backbone-branch network structure that learns Chinese semantics while remaining compatible with English TTI communities, enabling multilingual image generation and plugin integration.
Findings
Generates accurate Chinese semantic images.
Maintains compatibility with English TTI plugins.
Supports combined Chinese-English content generation.
Abstract
Text-to-Image generation (TTI) technologies are advancing rapidly, especially in the English language communities. However, apart from the user input language barrier problem, English-native TTI models inherently carry biases from their English world centric training data, which creates a dilemma for development of other language-native TTI models. One common choice is to fine-tune the English-native TTI model with translated samples. It falls short of fully addressing the model bias problem. Alternatively, training non-English language native models from scratch can effectively resolve the English world bias, but model trained this way would diverge from the English TTI communities, thus not able to utilize the strides continuously gaining in the English TTI communities any more. To build Chinese TTI model meanwhile keep compatibility with the English TTI communities, we propose a…
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Code & Models
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Multimodal Machine Learning Applications · Image Retrieval and Classification Techniques
MethodsDiffusion
