Computational Techniques for Spectral Image Analysis


Autoria(s): Hauta-Kasari, Markku
Data(s)

10/08/2009

10/08/2009

20/05/1999

Resumo

Multispectral images are becoming more common in the field of remote sensing, computer vision, and industrial applications. Due to the high accuracy of the multispectral information, it can be used as an important quality factor in the inspection of industrial products. Recently, the development on multispectral imaging systems and the computational analysis on the multispectral images have been the focus of a growing interest. In this thesis, three areas of multispectral image analysis are considered. First, a method for analyzing multispectral textured images was developed. The method is based on a spectral cooccurrence matrix, which contains information of the joint distribution of spectral classes in a spectral domain. Next, a procedure for estimating the illumination spectrum of the color images was developed. Proposed method can be used, for example, in color constancy, color correction, and in the content based search from color image databases. Finally, color filters for the optical pattern recognition were designed, and a prototype of a spectral vision system was constructed. The spectral vision system can be used to acquire a low dimensional component image set for the two dimensional spectral image reconstruction. The data obtained by the spectral vision system is small and therefore convenient for storing and transmitting a spectral image.

Identificador

978-952-214-785-1

1456-4491

http://www.doria.fi/handle/10024/46789

URN:ISBN:978-952-214-785-1

Idioma(s)

en

Publicador

Lappeenranta University of Technology

Relação

951-764-333-0

Acta Universitatis Lappeenrantaensis

Palavras-Chave #Color #color constancy #color filter #color spectra #spectral image #spectral imaging
Tipo

Väitöskirja

Doctoral Dissertation