Spectral reflectance reconstruction based on wideband multi-illuminant imaging and a modified particle swarm optimization algorithm
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Zhang, Xinmeng; Cui, Guihua; Ruan, Xiukai; Cui, Di; Gao, Xiaohong; Chen, Qifan; Yao, Yuan; Melgosa Latorre, Manuel; Sueeprasan, SuchitraEditorial
Optica Publishing Group
Date
2024-01-16Referencia bibliográfica
Xinmeng Zhang, Guihua Cui, Xiukai Ruan, Di Cui, Xiaohong Gao, Qifan Chen, Yuan Yao, Manuel Melgosa, and Suchitra Sueeprasan, "Spectral reflectance reconstruction based on wideband multi-illuminant imaging and a modified particle swarm optimization algorithm," Opt. Express 32, 2942-2958 (2024) [10.1364/OE.506136]
Sponsorship
Ministerio de Ciencia e Innovación and Agencia Estatal de Investigación (PID2022-138031NB-I00/SRA/ 10.13039/501100011033); National Natural Science Foundation of China (61671329, 61775170)Abstract
A method for spectral reflectance factor reconstruction based on wideband multiilluminant
imaging was proposed, using a programmable LED lighting system and modified
Bare Bones Particle Swarm Optimization algorithms. From a set of 16 LEDs with different
spectral power distributions, nine light sources with correlated color temperatures in the range of
1924 K - 15746 K, most of them daylight simulators, were generated. Samples from three color
charts (X-Rite ColorChecker Digital SG, SCOCIE ScoColor paint chart, and SCOCIE ScoColor
textile chart), were captured by a color industrial camera under the nine light sources, and used
in sequence as training and/or testing colors. The spectral reconstruction models achieved under
multi-illuminant imaging were trained and tested using the canonical Bare Bones Particle Swarm
Optimization and its proposed modifications, along with six additional and commonly used
algorithms. The impacts of different illuminants, illuminant combinations, algorithms, and
training colors on reconstruction accuracy were studied comprehensively. The results indicated
that training colors covering larger regions of color space give more accurate reconstructions
of spectral reflectance factors, and combinations of two illuminants with a large difference
of correlated color temperature achieve more than twice the accuracy of that under a single
illuminant. Specifically, the average reconstruction error by the method proposed in this paper for
patches from two color charts under A+ D90 light sources was 0.94 and 1.08 CIEDE2000 color
difference units. The results of the experiment also confirmed that some reconstruction algorithms
are unsuitable for predicting spectral reflectance factors from multi-illuminant images due to the
complexity of optimization problems and insufficient accuracy. The proposed reconstruction
method has many advantages, such as being simple in operation, with no requirement of prior
knowledge, and easy to implement in non-contact color measurement and color reproduction
devices.