Multi-style Cartoon Style Migration Study

Authors

  • Song You
  • Guojun Lin

DOI:

https://doi.org/10.54691/6vefqm71

Keywords:

Cartoon Animation; Generative Adversarial Network; Style Migration; Adaptive Normalization.

Abstract

Cartoon pictures are a kind of art form that we often contact in our daily life, and generating different styles of cartoon pictures from a given real-life photo is a great promotion for the development of art. Aiming at the current existing methods in generating cartoon images appear in the degree of stylization is insufficient, the generalization ability of the situation is poor, this paper proposes a kind of improvement of the generation of adversarial network: in the generator module to join the adaptive normalization way to improve the generalization ability of the model; at the same time the introduction of the auxiliary discriminator to help the generator style to better present the different styles; in the data processing of this paper on the cartoon image to do guided filtering. The experimental results show that the cartoon image generated by the method of this paper is of higher quality and better effect.

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References

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Published

2024-05-21

Issue

Section

Articles

How to Cite

You, S., & Lin, G. (2024). Multi-style Cartoon Style Migration Study . Scientific Journal of Technology, 6(5), 60-66. https://doi.org/10.54691/6vefqm71