Xiangru Zhu
2022
ARTIST: A Transformer-based Chinese Text-to-Image Synthesizer Digesting Linguistic and World Knowledge
Tingting Liu
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Chengyu Wang
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Xiangru Zhu
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Lei Li
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Minghui Qiu
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Jun Huang
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Ming Gao
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Yanghua Xiao
Findings of the Association for Computational Linguistics: EMNLP 2022
Text-to-Image Synthesis (TIS) is a popular task to convert natural language texts into realistic images. Recently, transformer-based TIS models (such as DALL-E) have been proposed using the encoder-decoder architectures. Yet, these billion-scale TIS models are difficult to tune and deploy in resource-constrained environments. In addition, there is a lack of language-specific TIS benchmarks for Chinese, together with high-performing models with moderate sizes. In this work, we present ARTIST, A tRansformer-based Chinese Text-to-Image SynThesizer for high-resolution image generation. In ARTIST, the rich linguistic and relational knowledge facts are injected into the model to ensure better model performance without the usage of ultra-large models. We further establish a large-scale Chinese TIS benchmark with the re-production results of state-of-the-art transformer-based TIS models.Results show ARTIST outperforms previous approaches.
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Co-authors
- Tingting Liu 1
- Chengyu Wang 1
- Lei Li 1
- Minghui Qiu 1
- Jun Huang 1
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