Blur parameters identification for simultaneous defocus and motion blur

被引:18
作者
Shamik Tiwari
V. P. Shukla
S. R. Biradar
A. K. Singh
机构
[1] Mody Institute of Technology & Science,FET
[2] SDM College of Engineering,undefined
关键词
Blind image restoration; Defocus blur; Motion blur; Radon transform; Generalized regression neural network;
D O I
10.1007/s40012-014-0039-3
中图分类号
学科分类号
摘要
Motion blur and defocus blur are common cause of image degradation. Blind restoration of such images demands identification of the accurate point spread function for these blurs. The identification of joint blur parameters in barcode images is considered in this paper using logarithmic power spectrum analysis. First, Radon transform is utilized to identify motion blur angle. Then we estimate the motion blur length and defocus blur radius of the joint blurred image with generalized regression neural network (GRNN). The input of GRNN is the sum of the amplitudes of the normalized logarithmic power spectrum along vertical direction and concentric circles for motion and defocus blurs respectively. This scheme is tested on multiple barcode images with varying parameters of joint blur. We have also analyzed the effect of joint blur when one blur has same, greater or lesser extents to another one. The results of simulation experiments show the high precision of proposed method and reveals that dominance of one blur on another does not affect too much on the applied parameter estimation approach.
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页码:11 / 22
页数:11
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