Tell2design: A dataset for language-guided floor plan generation

S Leng, Y Zhou, MH Dupty, WS Lee, SC Joyce… - arXiv preprint arXiv …, 2023 - arxiv.org
arXiv preprint arXiv:2311.15941, 2023arxiv.org
We consider the task of generating designs directly from natural language descriptions, and
consider floor plan generation as the initial research area. Language conditional generative
models have recently been very successful in generating high-quality artistic images.
However, designs must satisfy different constraints that are not present in generating artistic
images, particularly spatial and relational constraints. We make multiple contributions to
initiate research on this task. First, we introduce a novel dataset,\textit {Tell2Design}(T2D) …
We consider the task of generating designs directly from natural language descriptions, and consider floor plan generation as the initial research area. Language conditional generative models have recently been very successful in generating high-quality artistic images. However, designs must satisfy different constraints that are not present in generating artistic images, particularly spatial and relational constraints. We make multiple contributions to initiate research on this task. First, we introduce a novel dataset, \textit{Tell2Design} (T2D), which contains more than floor plan designs associated with natural language instructions. Second, we propose a Sequence-to-Sequence model that can serve as a strong baseline for future research. Third, we benchmark this task with several text-conditional image generation models. We conclude by conducting human evaluations on the generated samples and providing an analysis of human performance. We hope our contributions will propel the research on language-guided design generation forward.
arxiv.org
顯示最佳搜尋結果。 查看所有結果