Proceedings of the Workshop on Multilingual Multimodal Learning

Emanuele Bugliarello, Kai-Wei Cheng, Desmond Elliott, Spandana Gella, Aishwarya Kamath, Liunian Harold Li, Fangyu Liu, Jonas Pfeiffer, Edoardo Maria Ponti, Krishna Srinivasan, Ivan Vulić, Yinfei Yang, Da Yin (Editors)


Anthology ID:
2022.mml-1
Month:
May
Year:
2022
Address:
Dublin, Ireland and Online
Venue:
MML
SIG:
Publisher:
Association for Computational Linguistics
URL:
https://aclanthology.org/2022.mml-1
DOI:
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PDF:
https://preview.aclanthology.org/nschneid-patch-3/2022.mml-1.pdf

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Proceedings of the Workshop on Multilingual Multimodal Learning
Emanuele Bugliarello | Kai-Wei Cheng | Desmond Elliott | Spandana Gella | Aishwarya Kamath | Liunian Harold Li | Fangyu Liu | Jonas Pfeiffer | Edoardo Maria Ponti | Krishna Srinivasan | Ivan Vulić | Yinfei Yang | Da Yin

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Language-agnostic Semantic Consistent Text-to-Image Generation
SeongJun Jung | Woo Suk Choi | Seongho Choi | Byoung-Tak Zhang

Recent GAN-based text-to-image generation models have advanced that they can generate photo-realistic images matching semantically with descriptions. However, research on multi-lingual text-to-image generation has not been carried out yet much. There are two problems when constructing a multilingual text-to-image generation model: 1) language imbalance issue in text-to-image paired datasets and 2) generating images that have the same meaning but are semantically inconsistent with each other in texts expressed in different languages. To this end, we propose a Language-agnostic Semantic Consistent Generative Adversarial Network (LaSC-GAN) for text-to-image generation, which can generate semantically consistent images via language-agnostic text encoder and Siamese mechanism. Experiments on relatively low-resource language text-image datasets show that the model has comparable generation quality as images generated by high-resource language text, and generates semantically consistent images for texts with the same meaning even in different languages.