Where Culture Fades: Revealing the Cultural Gap in Text-to-Image Generation

Shi, Chuancheng, Li, Shangze, Guo, Shiming, Xie, Simiao, Wu, Wenhua, Dou, Jingtong, Wu, Chao, Xiao, Canran, Wang, Cong, Cheng, Zifeng, Shen, Fei, Chua, Tat-Seng

arXiv.org Artificial Intelligence 

Multilingual text-to-image (T2I) models have advanced rapidly in terms of visual realism and semantic alignment, and are now widely utilized. Y et outputs vary across cultural contexts: because language carries cultural connotations, images synthesized from multilingual prompts should preserve cross-lingual cultural consistency. W e conduct a comprehensive analysis showing that current T2I models often produce culturally neutral or English-biased results under multilingual prompts. Analyses of two representative models indicate that the issue stems not from missing cultural knowledge but from insufficient activation of culture-related representations. W e propose a probing method that localizes culture-sensitive signals to a small set of neurons in a few fixed layers. Guided by this finding, we introduce two complementary alignment strategies: (1) inference-time cultural activation that amplifies the identified neurons without backbone fine-tuned; and (2) layer-targeted cultural enhancement that updates only culturally relevant layers. Experiments on our CultureBench demonstrate consistent improvements over strong baselines in cultural consistency while preserving fidelity and diversity.

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