Whilst there are perhaps only a few scientific methods, there seem to be almost as many artistic methods as there are artists. Artistic processes appear to inhabit the highest order of open-endedness. To begin to understand some of the processes of art making it is helpful to try to automate them even partially. In this paper, a novel algorithm for producing generative art is described which allows a user to input a text string, and which in a creative response to this string, outputs an image which interprets that string. It does so by evolving images using a hierarchical neural Lindenmeyer system, and evaluating these images along the way using an image text dual encoder trained on billions of images and their associated text from the internet. In doing so we have access to and control over an instance of an artistic process, allowing analysis of which aspects of the artistic process become the task of the algorithm, and which elements remain the responsibility of the artist.
翻译:虽然也许只有少数科学方法,但似乎有几乎与艺术家一样多的艺术方法。艺术过程似乎占据着开放性的最高顺序。为了开始理解艺术过程的某些过程,甚至部分地试图使这些过程自动化。在本文中,描述了制作基因化艺术的新奇算法,允许用户输入文字字符串,在对这个字符串的创造性反应中,产生一种能解释该字符串的图像。它通过使用一个等级分级神经系统来演化图像,并使用经过数十亿图象培训的图像双倍编码器及其互联网相关文本来评估这些图像。在这样做的时候,我们可以接触和控制艺术过程的事例,从而能够分析艺术过程的哪些方面成为算法的任务,哪些内容仍然是艺术家的责任。