论文标题
深入学习单个美学
Deep Learning of Individual Aesthetics
论文作者
论文摘要
对人类美学偏好的准确评估是创造性进化和生成系统研究的主要挑战。先前的工作倾向于专注于人工制品的特征度量,例如对称性,复杂性和连贯性。但是,心理学的研究模型表明,人类的美学体验封装了超出人工制品的因素,使精确的计算模型非常难以设计。交互式遗传算法(IGA)通过对美学的人类主观评估来规避问题,但由于用户疲劳和人口较小而受到限制。在本文中,我们研究了深度学习的最新进展如何有助于自动化个人审美判断。使用领先的艺术家的计算机艺术数据集,我们研究了图像测量(例如复杂性和人类美学评估)之间的关系。我们使用降低方法可视化基因型和表型空间,以支持生成系统中新区域的探索。对艺术家先前的审美评估培训的卷积神经网络被用来建议相似的新可能性或已知的高质量基因型 - 表型映射之间。我们将此分类和发现系统集成到用于不断发展复杂生成艺术和设计的软件工具中。
Accurate evaluation of human aesthetic preferences represents a major challenge for creative evolutionary and generative systems research. Prior work has tended to focus on feature measures of the artefact, such as symmetry, complexity and coherence. However, research models from Psychology suggest that human aesthetic experiences encapsulate factors beyond the artefact, making accurate computational models very difficult to design. The interactive genetic algorithm (IGA) circumvents the problem through human-in-the-loop, subjective evaluation of aesthetics, but is limited due to user fatigue and small population sizes. In this paper we look at how recent advances in deep learning can assist in automating personal aesthetic judgement. Using a leading artist's computer art dataset, we investigate the relationship between image measures, such as complexity, and human aesthetic evaluation. We use dimension reduction methods to visualise both genotype and phenotype space in order to support the exploration of new territory in a generative system. Convolutional Neural Networks trained on the artist's prior aesthetic evaluations are used to suggest new possibilities similar or between known high quality genotype-phenotype mappings. We integrate this classification and discovery system into a software tool for evolving complex generative art and design.