UnMix-NeRF: Spectral Unmixing Meets Neural Radiance Fields

Perez, Fabian, Rojas, Sara, Hinojosa, Carlos, Rueda-Chacón, Hoover, Ghanem, Bernard

arXiv.org Artificial Intelligence 

Neural Radiance Field (NeRF)-based segmentation methods focus on object semantics and rely solely on RGB data, lacking intrinsic material properties. This limitation restricts accurate material perception, which is crucial for robotics, augmented reality, simulation, and other applications. W e introduce UnMix-NeRF, a framework that integrates spectral unmixing into NeRF, enabling joint hy-perspectral novel view synthesis and unsupervised material segmentation. Our method models spectral reflectance via diffuse and specular components, where a learned dictionary of global endmembers represents pure material signatures, and per-point abundances capture their distribution. F or material segmentation, we use spectral signature predictions along learned endmembers, allowing unsupervised material clustering. Additionally, UnMix-NeRF enables scene editing by modifying learned endmember dictionaries for flexible material-based appearance manipulation.