4.5 Article

Image generation step by step: animation generation-image translation

Journal

APPLIED INTELLIGENCE
Volume 52, Issue 7, Pages 8087-8100

Publisher

SPRINGER
DOI: 10.1007/s10489-021-02835-z

Keywords

Generative adversarial networks; LGAN (Link Generative Adversarial Networks); Unconditional generation part; Anime images conditional generation part; Super-resolution network

Funding

  1. National Natural Science Foundation of China [61461053]
  2. Yunnan University of the China Postgraduate Science Foundation [2020306]

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This paper introduces the LGAN (Link Generative Adversarial Networks) model, which consists of G1 and G2 parts for image synthesis; G1 generates anime images with highly abstract features, while G2 enhances image resolution and performs conditional generation. The comparison test shows LGAN(SEG) outperforming other models.
Generative adversarial networks play an important role in image generation, but the successful generation of high-resolution images from complex data sets remains a challenging goal. In this paper, we propose the LGAN (Link Generative Adversarial Networks) model, which can effectively enhance the quality of the synthesized images. The LGAN model consists of two parts, G1 and G2. G1 is responsible for the unconditional generation part, which generates anime images with highly abstract features containing few coefficients but continuous image elements covering the overall image features. Moreover, G2 is responsible for the conditional generation part (image translation), consisting of mapping and Superresolution networks. The mapping network fills the output of G1 into the real-world image after semantic segmentation or edge detection processing; the Superresolution network super-resolves the actual picture after completing mapping to improve the image's resolution. In the comparison test with WGAN, SAGAN, WGAN-GP and PG-GAN, this paper's LGAN(SEG) leads 64.36 and 12.28, respectively, fully proving the model's superiority.

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