人工智能艺术作品中生成对抗网络潜力的系统文献综述

Farrel Rasyad, Hardi Andry Kongguasa, Nicholas Christandy Onggususilo, Anderies, Afdhal Kurniawan, A. A. Gunawan
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引用次数: 0

摘要

多年来,人类一直在学习书法和计算程序来培养创造力。使用人工智能和生成对抗网络的图像生成技术目前正达到其性能的顶峰。虽然有越来越新的算法来改进图像生成系统,但图像的输出充其量仍然是合适的,并且只在其类别中表现出色。虽然生成的一些图像确实足够好,可以使用,但目前尚不清楚人工智能图像生成的能力是否能超越其创造性的人类同行。因此,本文献研究旨在探索人工智能图像生成的基础知识,它们是如何工作的,以及哪些因素有助于创造简单的图片等艺术。几年前的研究表明,大多数生成的图像不够好,无法用于创造性用途,因为它们只复制了数据集的痕迹。造成这种情况的最重要因素是使用的算法以及如何使用它来创建新图像。总的来说,他们得出的结论是,虽然目前人工智能生成的图像正在改进,但它们仍然没有足够的创造力来取代人类的创造力。
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A Systematic Literature Review of Generative Adversarial Network Potential In AI Artwork
Humans have studied calligraphy and calculated programs to foster creativity for years. Image generation technology using artificial intelligence and Generative Adversarial Networks is currently reaching the peak of its performance. While there are newer and newer algorithms to improve the image generation system, the output of the images is still suitable at best and only excels in their category. While it is true that some of the images generated are good enough to be used, it is still unclear whether the capabilities of AI image generation can outperform their creative human counterparts. Therefore, this literature study aims to explore the basics of AI image generation, how they work, and what factors contribute to creating art such as simple pictures. Previous studies from several years ago show that most generated images are not good enough for creative usage because they only replicate traces of their dataset. The most significant factor contributing to this is the algorithm used and how it is used to create new images. In general, the concluded that while current AI-generated images are improving, they are still not creative enough to replace human creativity.
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