Using the SpectraCube to Build a Multispectral Image Database

Multispectral image capture, unlike traditional RGB imaging, records the colour signals in a scene. Most available devices are either filter-wheel multiple exposure systems or point- measuring diffraction grating based devices. In this article we introduce a 2D matrix, full spectral, single exposure capture system – the Applied Spectral Imag-ing SpectraCube – which determines multispectral images, building on on the principle of interferometry. We explain the theory of operation of the SpectraCube, show characterisation results and present an initial multi-spectral database of indoor images. This step is not trivial. Often there are significant errors in the spectra captured by the SpectraCube. However, these errors are surprisingly regular and can be corrected. The images were captured at a high spectral resolution, comparable to spectroradiometers, yet at an exposure significantly shorter than that of filter- wheel based systems.

[1]  J. Pate Introduction to Optics , 1937, Nature.

[2]  Dario Cabib,et al.  New compact-design interferometer-based spectral imaging system for biomedical applications , 1998, Photonics West - Biomedical Optics.

[3]  Jerome D. Tietz,et al.  Image capture: simulation of sensor responses from hyperspectral images , 2001, IEEE Trans. Image Process..

[4]  K Martinez,et al.  High-resolution colorimetric imaging of paintings , 1993, Electronic Imaging.

[5]  Dario Cabib,et al.  Spatially resolved Fourier transform spectroscopy (spectral imaging): a powerful tool for quantitative analytical microscopy , 1996, Photonics West.

[6]  Hans Brettel,et al.  Multispectral Image Acquisition and Simulation of Illuminant Changes , 1998 .

[7]  Robert W. G. Hunt,et al.  The reproduction of colour , 1957 .

[8]  Jon Y. Hardeberg,et al.  Spectrophotometric Image Analysis of Fine Art Paintings , 1996, CIC.

[9]  G. Lippmann,et al.  Sur la théorie de la photographie des couleurs simples et composées par la méthode interférentielle , 2022 .

[10]  Andreas Quirrenbach,et al.  Optical Interferometry , 2001 .

[11]  Roy S. Berns,et al.  Comparison of Spectrally Narrow-Band Capture Versus Wide-Band with a Priori Sample Analysis for Spectral Reflectance Estimation , 2000, CIC.

[12]  L. Maloney Evaluation of linear models of surface spectral reflectance with small numbers of parameters. , 1986, Journal of the Optical Society of America. A, Optics and image science.

[13]  John C. Viney,et al.  The Principles of Interferometric Spectroscopy , 1979 .

[14]  M. Rosen,et al.  Lippman 2000: a spectral image database under construction , 1999 .