使用生成式对抗网络和视觉转换器生成智能广告图像

Hang Zhang, Wenzheng Qu, Huizhen Long, Min Chen
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引用次数: 0

摘要

随着数字营销的不断发展,广告图像的生成已成为吸引用户兴趣和提高广告效果的关键。然而,现有方法在满足广告内容多样化和创意性需求方面存在局限性,因此需要创新算法来改善广告生成结果。为应对这些挑战,本研究提出了一种深度学习算法框架,巧妙地整合了生成式对抗网络和基于 VGG 的视觉转换器模型,以提高广告图像生成的效果。系统实验表明,本文提出的模型在多个数据集上实现了超过 0.7 的 AUC 指标值。实验结果表明,新算法显著提高了广告内容的吸引力,尤其是在在线评估实验中为网站运营带来了巨大的好处。
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The Intelligent Advertising Image Generation Using Generative Adversarial Networks and Vision Transformer
With the continuous evolution of digital marketing, the generation of advertising images has become crucial in capturing user interest and enhancing advertising effectiveness. However, existing methods face limitations in meeting the diverse and creative demands of advertising content, necessitating innovative algorithms to improve advertising generation outcomes. In addressing these challenges, this study proposes a deep learning algorithm framework that cleverly integrates a generative adversarial network and an VGG-based visual transformer model to enhance the effectiveness of advertising image generation. Systematic experimentation shows that the model proposed in this article achieves an AUC metric value of more than 0.7 on several datasets. The results of the experiments demonstrate that the novel algorithm significantly improves the attractiveness of advertising content, particularly showcasing substantial benefits in website operations during online evaluation experiments.
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