PSF estimation for defocus blurred image based on quantum back-propagation neural network

Images obtained by an aberration-free system are defocused blur due to motion in depth and/or zooming. The precondition of restoring the degraded image is to estimate point spread function (PSF) of the imaging system as precisely as possible. But it is difficult to identify the analytic model of PSF precisely due to the complexity of the degradation process. Inspired by the similarity between the quantum process and imaging process in the probability and statistics fields, one reformed multilayer quantum neural network (QNN) is proposed to estimate PSF of the defocus blurred image. Different from the conventional artificial neural network (ANN), an improved quantum neuron model is used in the hidden layer instead, which introduces a 2-bit controlled NOT quantum gate to control output and adopts 2 texture and edge features as the input vectors. The supervised back-propagation learning rule is adopted to train network based on training sets from the historical images. Test results show that this method owns excellent features of high precision and strong generalization ability.

[1]  Kaoru Hirota,et al.  A flexible representation of quantum images for polynomial preparation, image compression, and processing operations , 2011, Quantum Inf. Process..

[2]  Nobuyuki Matsui,et al.  Image Compression by Layered Quantum Neural Networks , 2002, Neural Processing Letters.

[3]  Nobuyuki Matsui,et al.  Neural network based on QBP and its performance , 2000, Proceedings of the IEEE-INNS-ENNS International Joint Conference on Neural Networks. IJCNN 2000. Neural Computing: New Challenges and Perspectives for the New Millennium.

[4]  M. Cannon Blind deconvolution of spatially invariant image blurs with phase , 1976 .

[5]  Hon-Son Don,et al.  Blur identification and image restoration using a multilayer neural network , 1991, [Proceedings] 1991 IEEE International Joint Conference on Neural Networks.

[6]  Zarina Myles,et al.  Recovering affine motion and defocus blur simultaneously , 1996, Proceedings CVPR IEEE Computer Society Conference on Computer Vision and Pattern Recognition.

[7]  Ajit Narayanan,et al.  Quantum artificial neural network architectures and components , 2000, Inf. Sci..

[8]  Yasushi Mitsui,et al.  APPLICATION OF ARTIFICIAL NEURAL NETWORKS TO LOAD IDENTIFICATION , 1998 .

[9]  Salvador E. Venegas-Andraca,et al.  Processing images in entangled quantum systems , 2010, Quantum Inf. Process..