Eliminating Rasterization: Direct Vector Floor Plan Generation with DiffPlanner
Shidong Wang, Renato Pajarola

TL;DR
DiffPlanner is a novel vector-space deep learning framework using a Transformer-based diffusion model for boundary-constrained floor plan generation, eliminating rasterization and improving control, quality, and accuracy.
Contribution
The paper introduces DiffPlanner, a vector-space diffusion model that directly generates floor plans, avoiding rasterization and enhancing controllability and quality.
Findings
Outperforms existing methods in quantitative metrics
Produces higher-quality, more accurate floor plans
Offers greater user controllability in design generation
Abstract
The boundary-constrained floor plan generation problem aims to generate the topological and geometric properties of a set of rooms within a given boundary. Recently, learning-based methods have made significant progress in generating realistic floor plans. However, these methods involve a workflow of converting vector data into raster images, using image-based generative models, and then converting the results back into vector data. This process is complex and redundant, often resulting in information loss. Raster images, unlike vector data, cannot scale without losing detail and precision. To address these issues, we propose a novel deep learning framework called DiffPlanner for boundary-constrained floor plan generation, which operates entirely in vector space. Our framework is a Transformer-based conditional diffusion model that integrates an alignment mechanism in training, aligning…
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