Modern machine learning techniques, such as deep neural networks, are transforming many disciplines ranging from image recognition to language understanding, by uncovering patterns in big data and making accurate predictions. They have also shown promising results for synthesizing new designs, which is crucial for creating products and enabling innovation. Generative models, including generative adversarial networks (GANs), have proven to be effective for design synthesis with applications ranging from product design to metamaterial design. These automated computational design methods can support human designers, who typically create designs by a time-consuming process of iteratively exploring ideas using experience and heuristics. However, there are still challenges remaining in automatically synthesizing `creative' designs. GAN models, however, are not capable of generating unique designs, a key to innovation and a major gap in AI-based design automation applications. This paper proposes an automated method, named CreativeGAN, for generating novel designs. It does so by identifying components that make a design unique and modifying a GAN model such that it becomes more likely to generate designs with identified unique components. The method combines state-of-art novelty detection, segmentation, novelty localization, rewriting, and generative models for creative design synthesis. Using a dataset of bicycle designs, we demonstrate that the method can create new bicycle designs with unique frames and handles, and generalize rare novelties to a broad set of designs. Our automated method requires no human intervention and demonstrates a way to rethink creative design synthesis and exploration.
翻译:现代机器学习技术,如深层神经网络,正在通过发现大数据中的模式和准确的预测,改变许多学科,从图像识别到语言理解,从图像识别到语言理解等,它们也展示了对创造产品和促成创新至关重要的新设计合成的有希望的结果。创用模型,包括基因对抗网络(GANs),已证明在设计合成方面是有效的,应用从产品设计到元物质设计等各种应用。这些自动化计算设计方法可以支持人类设计师,这些设计师通常通过一个耗时的过程来创造设计设计,这种过程是利用经验和超自然学来迭代探索各种想法的。然而,在自动合成“创新”设计方面仍然存在挑战。然而,GAN模型无法产生独特的设计、创新的关键和基于AI的设计自动化应用中的重大差距。本文提出了一种自动化方法,名为“创意”GAN,用于创造新设计。它通过确定一个设计独特和修改GAN模型,从而更有可能产生与独特组成部分相匹配的设计。该方法结合了“创新”的州-艺术创新设计模型、广泛设计方法的诊断、我们所使用的基因分类和新方法设计,从而展示了一种创新的方法。