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AttnGAN: Fine-Grained Text to Image Generation with Attentional Generative Adversarial Networks

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In this paper, we propose an Attentional Generative Adversarial Network (AttnGAN) that allows attention-driven, multi-stage refinement for fine-grained text-to-image generation. With a novel attentional generative network, the AttnGAN can synthesize fine-grained details at different subregions of the image by paying attentions to the relevant words in the natural language description. In addition, a deep attentional multimodal similarity model is proposed to compute a fine-grained image-text matching loss for training the generator. The proposed AttnGAN significantly outperforms the previous state of the art, boosting the best reported inception score by 14.14% on the CUB dataset and 170.25% on the more challenging COCO dataset. A detailed analysis is also performed by visualizing the attention layers of the AttnGAN. It for the first time shows that the layered attentional GAN is able to automatically select the condition at the word level for generating different parts of the image.

Tao Xu, Pengchuan Zhang, Qiuyuan Huang, Han Zhang, Zhe Gan, Xiaolei Huang, Xiaodong He• 2017

Related benchmarks

TaskDatasetResultRank
Text-to-Image GenerationMS-COCO (val)
FID33.1
112
Text-to-Image GenerationMS-COCO
FID33.1
75
Text-to-Image GenerationMS-COCO 256x256 (val)
FID35.49
53
Text-to-Image GenerationMSCOCO 30K
FID35.2
42
Text-to-Image SynthesisCOCO (test)
FID35.49
38
Text-to-Image GenerationCOCO 256 x 256 2014 (val)
FID35.49
37
Text-to-Image SynthesisMS-COCO (val)
FID33.1
35
Grounded Text-to-Image GenerationCOCO 2014 (val)
FID35.49
26
Text-to-Image GenerationCOCO 2014 (test)
FID33.1
25
Text-to-Image GenerationMS-COCO Captions 30,000 (val)
FID-035.2
21
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