Research on Stylization Algorithm of Ceramic Decorative Pattern Based on Ceramic Cloud Design Service Platform

Aiming at the problem of limited universality of the ceramic decorative pattern generation method, based on cloud computing and deep learning, a ceramic decorative pattern stylization algorithm based on ceramic cloud design service platform is proposed. This approach adopts the VGG19 network structure to implement the image style transferring algorithm. To evaluate the effect of our approach, eight groups of experiments are conducted to compare the content image and style image, and the effect of parameter modification on the generated image. After a comparative analysis of the experiment, the generated ceramic decorative pattern is very close to the real ceramic decorative pattern, the effect is more realistic, and it is practical.

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