DOIONLINE

DOIONLINE NO - IJAECS-IRAJ-DOIONLINE-20380

Publish In
International Journal of Advances in Electronics and Computer Science-IJAECS
Journal Home
Volume Issue
Issue
Volume-10,Issue-12  ( Dec, 2023 )
Paper Title
Creation of Animation-Like Backgrounds using Deep Learning
Author Name
Zijian Wang, Liucun Zhu, Kazuyoshi Yoshino, Shanjun Zhang
Affilition
1,2,4 Department of computer science, Kanagawa University, JAPAN 2Research Institute of Advanced Science and Technology, Beibu Gulf University, CHINA 3Department of Robotics and Mechatronics, Kanagawa Institute of Technology, JAPAN
Pages
33-36
Abstract
Processing images using object detection, image restoration, and generative adversarial networks to directly convert real-world images into high-quality anime-style background images is one of today's research hotspots in computer vision. Input real-world images, object detection using the cutting-edge target detection algorithm DETR and generation of masks for the detected objects. The image restoration algorithm LaMa is then used to erase areas of the image with masked portions, generating a real-world background image.Finally, AnimeGAN generative adversarial network is used to convert the real world background image into anime style background image.Aiming at the current popular Anime GAN's problems such as color distortion in image migration, a new AnimeGAN-SE is proposed by introducing SE-Residual Block (Squeeze Excitation Residual Block) to solve the problem of low color of the migrated image of Anime GAN. The experimental results show that the network works well for animated pictures. Keywords - Object Detection, Image Restoration, Generative Adversarial Networks, Anime Style
  View Paper