Learning to Compose Stylistic Calligraphy Artwork with Emotions

2021 
Emotion plays a critical role in calligraphy composition, which makes the calligraphy artwork impressive and have a soul. However, previous research on calligraphy generation all neglected the emotion as a major contributor to the artistry of calligraphy. Such defects prevent them from generating aesthetic, stylistic, and diverse calligraphy artworks, but only static handwriting font library instead. To address this problem, we propose a novel cross-modal approach to generate stylistic and diverse Chinese calligraphy artwork driven by different emotions automatically. We firstly detect the emotions in the text by a classifier, then generate the emotional Chinese character images via a novel modified Generative Adversarial Network (GAN) structure, finally we predict the layout for all character images with a recurrent neural network. We also collect a large-scale stylistic Chinese calligraphy image dataset with rich emotions. Experimental results demonstrate that our model outperforms all baseline image translation models significantly for different emotional styles in terms of content accuracy and style discrepancy. Besides, our layout algorithm can also learn the patterns and habits of calligrapher, and makes the generated calligraphy more artistic. To the best of our knowledge, we are the first to work on emotion-driven discourse-level Chinese calligraphy artwork composition.
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