Plan2Scene: Converting Floorplans to 3D Scenes

We address the task of converting a floorplan and a set of associated photos of a residence into a textured 3D mesh model, a task which we call Plan2Scene. Our system 1) lifts a floorplan image to a 3D mesh model; 2) synthesizes surface textures based on the input photos; and 3) infers textures for unobserved surfaces using a graph neural network architecture. To train and evaluate our system we create indoor surface texture datasets, and augment a dataset of floorplans and photos from prior work with rectified surface crops and additional annotations. Our approach handles the challenge of producing tileable textures for dominant surfaces such as floors, walls, and ceilings from a sparse set of unaligned photos that only partially cover the residence. Qualitative and quantitative evaluations show that our system produces realistic 3D interior models, outperforming baseline approaches on a suite of texture quality metrics and as measured by a holistic user study.

PDF Abstract CVPR 2021 PDF CVPR 2021 Abstract

Datasets


Introduced in the Paper:

Rent3D++

Used in the Paper:

Rent3D

Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Plan2Scene Rent3D++ Synth (CVPR 2021 version) COLOR (All Surfaces) 0.591 # 1
FREQ (All Surfaces) 0.034 # 1
SUBS (All Surfaces) 0.392 # 1
FID (All Surfaces) 196.2 # 1
TILE (All Surfaces) 17.6 # 1

Methods