TY - JOUR
T1 - Virtual Staging of Indoor Panoramic Images via Multi-task Learning and Inverse Rendering
AU - Shah, Uzair
AU - Jashari, Sara
AU - Tukur, Muhammad
AU - Househ, Mowafa
AU - Schneider, Jens
AU - Pintore, Giovanni
AU - Gobbetti, Enrico
AU - Agus, Marco
N1 - Publisher Copyright:
© IEEE. 2025 IEEE.
PY - 2025/9/3
Y1 - 2025/9/3
N2 - Capturing indoor environments with 360° images provides a cost-effective method for creating immersive content. However, virtual staging - removing existing furniture and inserting new objects with realistic lighting - remains challenging. We present VISPI (Virtual Staging Pipeline for Single Indoor Panoramic Images), a framework that enables interactive restaging of indoor scenes from a single panoramic image. Our approach combines multi-task deep learning with real-time rendering to extract geometric, semantic, and material information from cluttered scenes. The system includes: i) a vision transformer that simultaneously predicts depth, normals, semantics, albedo, and material properties; ii) spherical Gaussian lighting estimation; iii) real-time editing for interactive object placement; iv) stereoscopic Multi-Center-Of-Projection generation for Head Mounted Display exploration. The framework processes input through two pathways: extracting clutter-free representations for virtual staging and estimating material properties including metallic and roughness signals. We evaluate VISPI on Structured3D and FutureHouse datasets, demonstrating applications in real estate visualization, interior design, and virtual environment creation.
AB - Capturing indoor environments with 360° images provides a cost-effective method for creating immersive content. However, virtual staging - removing existing furniture and inserting new objects with realistic lighting - remains challenging. We present VISPI (Virtual Staging Pipeline for Single Indoor Panoramic Images), a framework that enables interactive restaging of indoor scenes from a single panoramic image. Our approach combines multi-task deep learning with real-time rendering to extract geometric, semantic, and material information from cluttered scenes. The system includes: i) a vision transformer that simultaneously predicts depth, normals, semantics, albedo, and material properties; ii) spherical Gaussian lighting estimation; iii) real-time editing for interactive object placement; iv) stereoscopic Multi-Center-Of-Projection generation for Head Mounted Display exploration. The framework processes input through two pathways: extracting clutter-free representations for virtual staging and estimating material properties including metallic and roughness signals. We evaluate VISPI on Structured3D and FutureHouse datasets, demonstrating applications in real estate visualization, interior design, and virtual environment creation.
UR - https://www.scopus.com/pages/publications/105015104600
U2 - 10.1109/MCG.2025.3605806
DO - 10.1109/MCG.2025.3605806
M3 - Article
AN - SCOPUS:105015104600
SN - 0272-1716
JO - IEEE Computer Graphics and Applications
JF - IEEE Computer Graphics and Applications
ER -