Paint4Poem: A Dataset for Artistic Visualization of Classical Chinese Poems
Dan Li, Shuai Wang, Jie Zou, Chang Tian, Elisha Nieuwburg, Fengyuan, Sun, Evangelos Kanoulas

TL;DR
Paint4Poem introduces a new dataset and benchmark for artistic visualization of classical Chinese poems, enabling research on style transfer and semantic relevance in poem-to-painting generation.
Contribution
The paper presents a novel dataset, Paint4Poem, combining high-quality artist-style paintings with poems, and establishes baseline models and evaluation metrics for this task.
Findings
Models generate paintings with good pictorial quality and style
Semantic relevance between poems and paintings is limited
Dataset enables research on style transfer and low-resource text-to-image generation
Abstract
In this work we propose a new task: artistic visualization of classical Chinese poems, where the goal is to generatepaintings of a certain artistic style for classical Chinese poems. For this purpose, we construct a new dataset called Paint4Poem. Thefirst part of Paint4Poem consists of 301 high-quality poem-painting pairs collected manually from an influential modern Chinese artistFeng Zikai. As its small scale poses challenges for effectively training poem-to-painting generation models, we introduce the secondpart of Paint4Poem, which consists of 3,648 caption-painting pairs collected manually from Feng Zikai's paintings and 89,204 poem-painting pairs collected automatically from the web. We expect the former to help learning the artist painting style as it containshis most paintings, and the latter to help learning the semantic relevance between poems and paintings. Further, we…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Computer Graphics and Visualization Techniques · Human Motion and Animation
