BSNeRF: Broadband Spectral Neural Radiance Fields for Snapshot Multispectral Light-field Imaging
Erqi Huang, John Restrepo, Xun Cao, Ivo Ihrke
Published: 2025/9/1
Abstract
Snapshot Multispectral Light-field Imaging (SMLI) is an emerging computational imaging technique that captures high-dimensional data (x, y, z, $\theta$, $\phi$, $\lambda$) in a single shot using a low-dimensional sensor. The accuracy of high-dimensional data reconstruction depends on representing the spectrum using neural radiance field models, which requires consideration of broadband spectral decoupling during optimization. Currently, some SMLI approaches avoid the challenge of model decoupling by either reducing light-throughput or prolonging imaging time. In this work, we propose a broadband spectral neural radiance field (BSNeRF) for SMLI systems. Experiments show that our model successfully decouples a broadband multiplexed spectrum. Consequently, this approach enhances multispectral light-field image reconstruction and further advances plenoptic imaging.