CVMar 27, 2022

iPLAN: Interactive and Procedural Layout Planning

arXiv:2203.14412v228 citationsh-index: 15
Originality Incremental advance
AI Analysis

This addresses the need for AI-aided design tools in fields like architecture and urban planning, offering an interactive approach rather than incremental automation.

The paper tackles the problem of automating layout design while incorporating human guidance, proposing iPLAN, a human-in-the-loop generative model that enables interactive co-evolution of designs, with results showing high fidelity, flexibility, and strong generalizability across diverse datasets.

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.

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