Fuzzy Matching Based on Gray-scale Difference for Quantum Images

Quantum image processing has recently emerged as an essential problem in practical tasks, e.g. real-time image matching. Previous studies have shown that the superposition and entanglement of quantum can greatly improve the efficiency of complex image processing. In this paper, a fuzzy quantum image matching scheme based on gray-scale difference is proposed to find out the target region in a reference image, which is very similar to the template image. Firstly, we employ the proposed enhanced quantum representation (NEQR) to store digital images. Then some certain quantum operations are used to evaluate the gray-scale difference between two quantum images by thresholding. If all of the obtained gray-scale differences are not greater than the threshold value, it indicates a successful fuzzy matching of quantum images. Theoretical analysis and experiments show that the proposed scheme performs fuzzy matching at a low cost and also enables exponentially significant speedup via quantum parallel computation.

[1]  David A. Meyer,et al.  Towards quantum template matching , 2004, SPIE Optics + Photonics.

[2]  Nan Jiang,et al.  Quantum image scaling using nearest neighbor interpolation , 2015, Quantum Inf. Process..

[3]  Ping Fan,et al.  Quantum realization of the bilinear interpolation method for NEQR , 2017, Scientific Reports.

[4]  Himanshu Thapliyal,et al.  A new design of the reversible subtractor circuit , 2011, 2011 11th IEEE International Conference on Nanotechnology.

[5]  Xiao Zheng,et al.  The effects of mixedness and entanglement on the properties of the entropic uncertainty in Heisenberg model with Dzyaloshinski–Moriya interaction , 2017, Quantum Inf. Process..

[6]  Hao Hu,et al.  Analysis and improvement of the quantum image matching , 2017, Quantum Inf. Process..

[7]  Kai Xu,et al.  Local feature point extraction for quantum images , 2015, Quantum Inf. Process..

[8]  Koji Nakamae,et al.  A quantum watermarking scheme using simple and small-scale quantum circuits , 2016, Quantum Information Processing.

[9]  N. Ranganathan,et al.  Design of Efficient Reversible Binary Subtractors Based on a New Reversible Gate , 2009, 2009 IEEE Computer Society Annual Symposium on VLSI.

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

[11]  Peng Liu,et al.  Using full duplex relaying in device-to-device (D2D) based wireless multicast services: a two-user case , 2014, Science China Information Sciences.

[12]  Sougato Bose,et al.  Storing, processing, and retrieving an image using quantum mechanics , 2003, SPIE Defense + Commercial Sensing.

[13]  R. Feynman Simulating physics with computers , 1999 .

[14]  Ping Fan,et al.  Quantum watermarking scheme through Arnold scrambling and LSB steganography , 2017, Quantum Inf. Process..

[15]  Lov K. Grover A fast quantum mechanical algorithm for database search , 1996, STOC '96.

[16]  Peter W. Shor,et al.  Polynominal time algorithms for discrete logarithms and factoring on a quantum computer , 1994, ANTS.

[17]  Kaoru Hirota,et al.  Watermarking and authentication of quantum images based on restricted geometric transformations , 2012, Inf. Sci..

[18]  Qiaoyan Wen,et al.  A Quantum Watermark Protocol , 2013 .

[19]  Kai Lu,et al.  NEQR: a novel enhanced quantum representation of digital images , 2013, Quantum Information Processing.

[20]  Jian Wang,et al.  Quantum image matching , 2016, Quantum Inf. Process..

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

[22]  Limei Zhao,et al.  Entangled quantum Otto heat engines based on two-spin systems with the Dzyaloshinski–Moriya interaction , 2017, Quantum Inf. Process..

[23]  Shahrokh Heidari,et al.  A Novel LSB Based Quantum Watermarking , 2016, International Journal of Theoretical Physics.

[24]  Nan Jiang,et al.  Quantum image translation , 2015, Quantum Inf. Process..

[25]  H. Ian,et al.  Global and Local Translation Designs of Quantum Image Based on FRQI , 2017, International Journal of Theoretical Physics.

[26]  Yu-Guang Yang,et al.  Novel quantum gray-scale image matching , 2015 .

[27]  Nan Jiang,et al.  Quantum image scaling up based on nearest-neighbor interpolation with integer scaling ratio , 2015, Quantum Information Processing.

[28]  Kai Lu,et al.  QSobel: A novel quantum image edge extraction algorithm , 2014, Science China Information Sciences.