TY - JOUR
T1 - Spectral responsivity estimator for color vision systems
T2 - Filter selection and noise effect
AU - Chang, G. W.
AU - Chen, Y. C.
PY - 2001/3
Y1 - 2001/3
N2 - The determination of spectral responsivities for machine vision systems plays a significant role in analyzing and predicting their color imaging performance. A filter-based optical system, called the spectral responsivity estimator, is developed in this paper. The design objective of the optical system is to effectively select a limited number of spectral (or broadband) filters to characterize the spectral features of color imaging processes which are contaminated by noise, so that the spectral response functions can be estimated with satisfactory accuracy. In this paper, a theoretical study is first presented to pave the way for this work, and then we propose a filter selection algorithm based on the technique of orthogonal-triangular (QR) decomposition with column pivoting, called the QRCP method. This method involves QR computations and a column permutation process, which determines a permutation matrix used to conduct subset (or filter) selection. Experimental results reveal that the proposed technique is truly consistent with the theoretical study on filter selections. As expected, the optical system with filters selected using the QRCP method is much less sensitive to noise than are those which use other spectral filters obtained using different selections. It turns out that our approach is an effective way to implement an optical system for estimating the spectral responsivities of color vision systems.
AB - The determination of spectral responsivities for machine vision systems plays a significant role in analyzing and predicting their color imaging performance. A filter-based optical system, called the spectral responsivity estimator, is developed in this paper. The design objective of the optical system is to effectively select a limited number of spectral (or broadband) filters to characterize the spectral features of color imaging processes which are contaminated by noise, so that the spectral response functions can be estimated with satisfactory accuracy. In this paper, a theoretical study is first presented to pave the way for this work, and then we propose a filter selection algorithm based on the technique of orthogonal-triangular (QR) decomposition with column pivoting, called the QRCP method. This method involves QR computations and a column permutation process, which determines a permutation matrix used to conduct subset (or filter) selection. Experimental results reveal that the proposed technique is truly consistent with the theoretical study on filter selections. As expected, the optical system with filters selected using the QRCP method is much less sensitive to noise than are those which use other spectral filters obtained using different selections. It turns out that our approach is an effective way to implement an optical system for estimating the spectral responsivities of color vision systems.
KW - Filter selection
KW - Orthogonal-triangular (QR) decomposition with column pivoting
KW - Spectral responsivity
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M3 - Article
AN - SCOPUS:0035271613
SN - 0255-6588
VL - 25
SP - 115
EP - 126
JO - Proceedings of the National Science Council, Republic of China, Part A: Physical Science and Engineering
JF - Proceedings of the National Science Council, Republic of China, Part A: Physical Science and Engineering
IS - 2
ER -