Outline

Ingegneria Sismica

Ingegneria Sismica

Image Creative Generation and Expressiveness Improvement Based on Deep Learning in Visual Communication Design

Author(s): Ke Ma1, Lin Qi2
1School of Art and Design, Zhengzhou University of Economics and Business, Zhengzhou, Henan, 451191, China
2HeNan Province Information Consultation Designing Research Co., Ltd., zhengzhou, HeNan, 450003, China
Ma, Ke. and Qi, Lin. “Image Creative Generation and Expressiveness Improvement Based on Deep Learning in Visual Communication Design.” Ingegneria Sismica Volume 43 Issue 1: 1-21, doi:10.65102/is2026125.

Abstract

In this paper, a progressive creative image intelligent generation method combined with contrast learning is proposed, based on progressive growth generative adversarial network, using progressive growth training method to generate high resolution creative images. The contrast learning loss function based on the target key corner point features is constructed, and the multi-scale image feature loss function is combined to improve the quality of image generation. Based on the multi-dimensional validation of CIFAR-10 and CelebA datasets, explore the applicability of this paper’s method in visual communication design. The improved PGGAN algorithm Inception Score reaches 8.91±0.04, significantly outperforming all compared algorithms. When the optimal control parameter γ = 0.5 is adopted, the improved PGGAN algorithm performs better than the algorithms that introduce the style loss and the contrast learning loss alone. The FID minimum is reached about 40 steps earlier than the original model, and the generation quality and convergence speed are significantly improved. The subjective evaluation shows that this paper’s method tops all three scores, with a composite score of 4.51±0.03, and the image generation results are more creative and expressive. The method in this paper has excellent performance in image generation and can provide new possibilities and directions for visual communication design.

Keywords
visual communication design; generative adversarial network; progressive generation; image generation

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