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 analyze Paint4Poem regarding poem diversity, painting style, and the semantic relevance between poems and paintings. We create abenchmark for Paint4Poem: we train two representative text-to-image generation models: AttnGAN and MirrorGAN, and evaluate theirperformance regarding painting pictorial quality, painting stylistic relevance, and semantic relevance between poems and paintings.The results indicate that the models are able to generate paintings that have good pictorial quality and mimic Feng Zikai's style, but thereflection of poem semantics is limited. The dataset also poses many interesting research directions on this task, including transferlearning, few-shot learning, text-to-image generation for low-resource data etc. The dataset is publicly available.(https://github.com/paint4poem/paint4poem)
翻译:在这项工作中,我们提出一个新的任务:中国古典诗歌的艺术视觉化,目标是为中国古典诗歌制作某种艺术风格的绘画。 为此,我们建造了一个新的数据集,名为Paint4poem。 油漆4Poem的第一部分是301对高品质的诗作, 由具有影响力的现代中国艺术家Feng Zikai手工收集的诗作配对。 由于其规模小, 有效培训诗作到绘画的制作模型带来了挑战, 我们引入了图画4Poeem的第二部分, 由3,648个从风津宜的绘画和89, 204个自动从网络收集的诗作配对组成。 我们期望前者帮助学习艺术家绘画风格, 因为它包含着大多数绘画, 而后者有助于了解诗作和绘画之间的语相关性。 我们分析图4Poeat4Poimetrial4, 以及诗作和绘画的多方向和绘画之间的关联性。 我们为绘画4Potopotial-patimalationalationalational-ligistrational-dealdealdealdealdeal