Litcius/Paper detail

Semantically supervised appearance decomposition for virtual staging from a single panorama

Tiancheng Zhi, Bowei Chen, Ivaylo Boyadzhiev, Sing Bing Kang, Martial Hebert, Srinivasa G. Narasimhan

2022ACM Transactions on Graphics13 citationsDOI

Abstract

We describe a novel approach to decompose a single panorama of an empty indoor environment into four appearance components: specular, direct sunlight, diffuse and diffuse ambient without direct sunlight. Our system is weakly supervised by automatically generated semantic maps (with floor, wall, ceiling, lamp, window and door labels) that have shown success on perspective views and are trained for panoramas using transfer learning without any further annotations. A GAN-based approach supervised by coarse information obtained from the semantic map extracts specular reflection and direct sunlight regions on the floor and walls. These lighting effects are removed via a similar GAN-based approach and a semantic-aware inpainting step. The appearance decomposition enables multiple applications including sun direction estimation, virtual furniture insertion, floor material replacement, and sun direction change, providing an effective tool for virtual home staging. We demonstrate the effectiveness of our approach on a large and recently released dataset of panoramas of empty homes.

Topics & Concepts

PanoramaComputer scienceSpecular reflectionArtificial intelligenceSunlightComputer visionCeiling (cloud)Window (computing)Specular highlightDecompositionGlobal illuminationComputer graphics (images)OpticsRendering (computer graphics)PhysicsMeteorologyOperating systemEcologyBiologyImage Enhancement TechniquesAdvanced Vision and ImagingRemote Sensing and LiDAR Applications