Layout design is ubiquitous in many applications, e.g. architecture/urban planning, etc, which involves a lengthy iterative design process. Recently, deep learning has been leveraged to automatically generate layouts via image generation, showing a huge potential to free designers from laborious routines. While automatic generation can greatly boost productivity, designer input is undoubtedly crucial. An ideal AI-aided design tool should automate repetitive routines, and meanwhile accept human guidance and provide smart/proactive suggestions. However, the capability of involving humans into the loop has been largely ignored in existing methods which are mostly end-to-end approaches. To this end, we propose a new human-in-the-loop generative model, iPLAN, which is capable of automatically generating layouts, but also interacting with designers throughout the whole procedure, enabling humans and AI to co-evolve a sketchy idea gradually into the final design. iPLAN is evaluated on diverse datasets and compared with existing methods. The results show that iPLAN has high fidelity in producing similar layouts to those from human designers, great flexibility in accepting designer inputs and providing design suggestions accordingly, and strong generalizability when facing unseen design tasks and limited training data.
翻译:设计布局设计在许多应用程序中普遍存在,例如建筑/城市规划等,这涉及一个漫长的迭代设计过程。最近,深层学习已被利用,通过图像生成自动生成布局,展示了让设计师摆脱劳累常规的巨大潜力。虽然自动生成可以极大地提高生产率,但设计师的投入无疑至关重要。理想的 AI 辅助设计工具应该将重复的例行程序自动化,同时接受人的指导并提供智能/积极的建议。然而,让人类参与环流的能力在大多数是端至端方法的现有方法中基本上被忽视。为此,我们提议了一个新的“人对端”的基因化模型(iPLAN),它能够自动生成布局,但也能够在整个程序中与设计师进行互动,使人类和AI能够将一个草图的想法逐渐融入最终设计。iPLAN在不同的数据集和与现有方法相比上得到了评估。结果显示,iPLAN在制作与来自人类设计师的类似布局时,具有高度的忠诚性,在接受设计师的投入和设计方面具有极大的灵活性,因此,在接受可视性设计任务时提供了强大的设计建议。