FurniScene: A Large-scale 3D Room Dataset with Intricate Furnishing Scenes
Genghao Zhang, Yuxi Wang, Chuanchen Luo, Shibiao Xu, Zhaoxiang Zhang,, Man Zhang, Junran Peng

TL;DR
FurniScene is a comprehensive large-scale 3D indoor scene dataset with detailed furnishings, enabling more realistic scene generation, supported by a novel diffusion model and benchmark evaluations.
Contribution
We introduce FurniScene, a large-scale detailed 3D room dataset with diverse furniture, and a novel Two-Stage Diffusion Scene Model for improved indoor scene generation.
Findings
High realism in generated indoor scenes
FurniScene covers diverse furniture types
Benchmark results show state-of-the-art performance
Abstract
Indoor scene generation has attracted significant attention recently as it is crucial for applications of gaming, virtual reality, and interior design. Current indoor scene generation methods can produce reasonable room layouts but often lack diversity and realism. This is primarily due to the limited coverage of existing datasets, including only large furniture without tiny furnishings in daily life. To address these challenges, we propose FurniScene, a large-scale 3D room dataset with intricate furnishing scenes from interior design professionals. Specifically, the FurniScene consists of 11,698 rooms and 39,691 unique furniture CAD models with 89 different types, covering things from large beds to small teacups on the coffee table. To better suit fine-grained indoor scene layout generation, we introduce a novel Two-Stage Diffusion Scene Model (TSDSM) and conduct an evaluation…
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Taxonomy
Topics3D Surveying and Cultural Heritage · Remote Sensing and LiDAR Applications · Land Use and Ecosystem Services
MethodsDiffusion
