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논문 기본 정보

자료유형
학술대회자료
저자정보
(Seoul National University of Science and Technology) (Seoul National University of Science and Technology)
저널정보
한국방송·미디어공학회 한국방송미디어공학회 학술발표대회 논문집 한국방송·미디어공학회 2021 하계학술대회
발행연도
수록면
105 - 108 (4page)

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초록· 키워드

Generative adversarial networks (GANs) have reached a great result at creating the synthesis image, especially in the face generation task. Unlike other deep learning tasks, the input of GANs is usually the random vector sampled by a probability distribution, which leads to unstable training and unpredictable output. One way to solve those problems is to employ the label condition in both the generator and discriminator. CelebA and FFHQ are the two most famous datasets for face image generation. While CelebA contains attribute annotations for more than 200,000 images, FFHQ does not have attribute annotations. Thus, in this work, we introduce a method to learn the attributes from CelebA then predict both soft and hard labels for FFHQ. The evaluated result from our model achieves 0.7611 points of the metric is the area under the receiver operating characteristic curve.
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목차

  1. Abstract
  2. 1. Introduction
  3. 2. Proposed Solution
  4. 3. Experiments
  5. 4. Conclusion
  6. References

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