Estimation of daylight spectral power distribution from uncalibrated hyperspectral radiance images
Metadatos
Mostrar el registro completo del ítemEditorial
Optica Publishing Group
Fecha
2024-03-07Referencia bibliográfica
Maximilian Czech, Steven Le Moan, Javier Hernández-Andrés, and Ben Müller, "Estimation of daylight spectral power distribution from uncalibrated hyperspectral radiance images," Opt. Express 32, 10392-10407 (2024) [10.1364/OE.514991]
Patrocinador
Universidad de Granada; Norges Teknisk-Naturvitenskapelige Universitet; Cubert GmbHResumen
This paper introduces a novel framework for estimating the spectral power distribution
of daylight illuminants in uncalibrated hyperspectral images, particularly beneficial for dronebased
applications in agriculture and forestry. The proposed method uniquely combines
image-dependent plausible spectra with a database of physically possible spectra, utilizing an
image-independent principal component space (PCS) for estimations. This approach effectively
narrows the search space in the spectral domain and employs a random walk methodology to
generate spectral candidates, which are then intersected with a pre-trained PCS to predict the
illuminant. We demonstrate superior performance compared to existing statistics-based methods
across various metrics, validating the framework’s efficacy in accurately estimating illuminants
and recovering reflectance values from radiance data. The method is validated within the spectral
range of 382–1002 nm and shows potential for extension to broader spectral ranges.