Estimation of PSF of image system using modified SVD method
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Estimation of PSF of image system using modified SVD method
Optics and Precision EngineeringVol. 14, Issue 3, Pages: 520-525(2006)
作者机构:
复旦大学 电子工程系 上海,200433
作者简介:
基金信息:
DOI:
CLC:TP391.4
Received:30 November 2005,
Revised:24 January 2006,
Published Online:30 June 2006,
Published:30 June 2006
稿件说明:
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WANG Yuan-yuan, SUN Zhi-Min, CAI Zheng. Estimation of PSF of image system using modified SVD method[J]. Optics and precision engineering, 2006, 14(3): 520-525.
DOI:
WANG Yuan-yuan, SUN Zhi-Min, CAI Zheng. Estimation of PSF of image system using modified SVD method[J]. Optics and precision engineering, 2006, 14(3): 520-525.DOI:
Estimation of PSF of image system using modified SVD method
To improve the performance of image restoration algorithms
a modified Singular Value Decomposition(SVD) method was proposed to estimate the Point Spread Function (PSF) of an imaging system. Using the discrete image degradation model
a block-based SVD filter scheme was applied for the image denoising with an automatically determined singular value rank. After the spectra of PSF singular vectors were estimated under an exponential model for the averaged spectra of un-degraded image singular vectors
the IFFT was used to get the time-domain estimation of the PSF. The experimental results show that this proposed method can be applied to estimate the PSF of the imaging system under a wide SNR range and its performance is better than the original method. It may be used as an effective method for the image preprocessing in image restoration problems.
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references
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