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HyperGS: Hyperspectral 3D Gaussian Splatting Supplementary Material
Conference proceeding   Peer reviewed

HyperGS: Hyperspectral 3D Gaussian Splatting Supplementary Material

Christopher Thomas Thirgood, Chao Ling, Oscar Mendez Maldonado, Jon Storey and Simon J Hadfield
CVPR 2025 (Nashville, 12/06/2025–15/06/2025)
07/03/2025

Abstract

View Synthesis Hyperspectral Computer Vision

We introduce HyperGS, a novel framework for Hyperspectral Novel View Synthesis (HNVS), based on a new latent 3D Gaussian Splatting (3DGS) technique. Our approach enables simultaneous spatial and spectral renderings by encoding material properties from multi-view 3D hyperspectral datasets. HyperGS reconstructs high-fidelity views from arbitrary perspectives with improved accuracy and speed, outperforming currently existing methods. To address the challenges of high-dimensional data, we perform view synthesis in a learned latent space, incorporating a pixel-wise adaptive density function and a pruning technique for increased training stability and efficiency. Additionally, we introduce the first HNVS benchmark, implementing a number of new baselines based on recent SOTA RGB-NVS techniques, alongside the small number of prior works on HNVS.

We demonstrate HyperGS's robustness through extensive evaluation of real and simulated hyperspectral scenes with a 14dB accuracy improvement upon previously published models.

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Author's Accepted Manuscript (supplemental) Open Access
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