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Towards Visual Text Design Transfer Across Languages

About

Visual text design plays a critical role in conveying themes, emotions, and atmospheres in multimodal formats such as film posters and album covers. Translating these visual and textual elements across languages extends the concept of translation beyond mere text, requiring the adaptation of aesthetic and stylistic features. To address this, we introduce a novel task of Multimodal Style Translation (MuST-Bench), a benchmark designed to evaluate the ability of visual text generation models to perform translation across different writing systems while preserving design intent. Our initial experiments on MuST-Bench reveal that existing visual text generation models struggle with the proposed task due to the inadequacy of textual descriptions in conveying visual design. In response, we introduce SIGIL, a framework for multimodal style translation that eliminates the need for style descriptions. SIGIL enhances image generation models through three innovations: glyph latent for multilingual settings, pretrained VAEs for stable style guidance, and an OCR model with reinforcement learning feedback for optimizing readable character generation. SIGIL outperforms existing baselines by achieving superior style consistency and legibility while maintaining visual fidelity, setting itself apart from traditional description-based approaches. We release MuST-Bench publicly for broader use and exploration https://huggingface.co/datasets/yejinc/MuST-Bench.

Yejin Choi, Jiwan Chung, Sumin Shim, Giyeong Oh, Youngjae Yu• 2024

Related benchmarks

TaskDatasetResultRank
Style Translation Fidelity EvaluationMuST-Bench
GPT-4V Fidelity (EN)3.89
4
Stylized Text GenerationMuST-Bench English
Style Fidelity0.4054
4
Stylized Text GenerationMuST-Bench Chinese
Style Fidelity0.4042
4
Stylized Text GenerationMuST-Bench Korean
Style Fidelity40.69
4
Visual Text GenerationMuST-Bench English
OCR Accuracy71.63
4
Visual Text GenerationMuST-Bench Chinese
OCR Accuracy74.81
4
Visual Text GenerationMuST-Bench Korean
OCR Accuracy65.77
4
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