Quantum Behaved Multi-objective PSO and ACO Optimization for Multi-level Thresholding

In this paper, two quantum behaved multi-objective optimization techniques, based on Binary Particle Swarm Optimization and Ant Colony Optimization, have been introduced. The proposed approaches are used to search optimal threshold values of gray scale images, by optimizing the non-dominated solutions using Li's method as objective function. These approaches coalesce the meta-heuristic algorithms with the intrinsic features of quantum theory to make the techniques more effective. The best fitness values, the set of optimal thresholds and the computation times at different level of thresholding have been reported both for the proposed techniques and their equivalent classical counterparts. The superiority of the techniques presented in this paper, are established in terms of computational time. Thereafter, the mean fitness and the standard deviation of the objective values prove that the proposed techniques are more effectual of than others. Finally, the performance of each technique has been evaluated by determining the PSNR values of the test images. It was found that the proposed techniques have better PSNR values as compared to their corresponding components. Hence, quality of thresholding is established in favour of the proposed techniques.

[1]  Siddhartha Bhattacharyya,et al.  An Efficient Quantum Inspired Genetic Algorithm with Chaotic Map Model Based Interference and Fuzzy Objective Function for Gray Level Image Thresholding , 2011, 2011 International Conference on Computational Intelligence and Communication Networks.

[2]  Ujjwal Maulik,et al.  Quantum inspired meta-heuristic algorithms for multi-level thresholding for true colour images , 2013, 2013 Annual IEEE India Conference (INDICON).

[3]  Lov K. Grover Quantum Computers Can Search Rapidly by Using Almost Any Transformation , 1998 .

[4]  Christian Blum,et al.  Metaheuristics in combinatorial optimization: Overview and conceptual comparison , 2003, CSUR.

[5]  Wilhelm Burger,et al.  Digital Image Processing - An Algorithmic Introduction using Java , 2008, Texts in Computer Science.

[6]  Siddhartha Bhattacharyya,et al.  Determination of optimal threshold of a gray-level image using a quantum inspired genetic algorithm with interference based on a random map model , 2010, 2010 IEEE International Conference on Computational Intelligence and Computing Research.

[7]  Nikhil R. Pal,et al.  On minimum cross-entropy thresholding , 1996, Pattern Recognit..

[8]  Pau-Choo Chung,et al.  A Fast Algorithm for Multilevel Thresholding , 2001, J. Inf. Sci. Eng..

[9]  David MacMahon,et al.  Quantum Computing Explained , 2008 .

[10]  U. Maulik,et al.  Chaotic Map Model-Based Interference Employed in Quantum-Inspired Genetic Algorithm to Determine the Optimum Gray Level Image Thresholding , 2015 .

[11]  Ujjwal Maulik,et al.  Multi-level thresholding using quantum inspired meta-heuristics , 2014, Knowl. Based Syst..

[12]  Peter W. Shor,et al.  Polynomial-Time Algorithms for Prime Factorization and Discrete Logarithms on a Quantum Computer , 1995, SIAM Rev..

[13]  M. Plenio,et al.  Quantifying Entanglement , 1997, quant-ph/9702027.

[14]  M. Lewenstein,et al.  Quantum Entanglement , 2020, Quantum Mechanics.

[15]  Ujjwal Maulik,et al.  New Quantum Inspired Tabu Search for Multi-level Colour Image thresholding , 2014, 2014 International Conference on Computing for Sustainable Global Development (INDIACom).

[16]  David McMahon Quantum Computing Explained , 2007 .

[17]  Siddhartha Bhattacharyya,et al.  A Brief Survey of Color Image Preprocessing and Segmentation Techniques , 2011 .

[18]  Ujjwal Maulik,et al.  Quantum inspired genetic algorithm and particle swarm optimization using chaotic map model based interference for gray level image thresholding , 2014, Swarm Evol. Comput..

[19]  Bülent Sankur,et al.  Survey over image thresholding techniques and quantitative performance evaluation , 2004, J. Electronic Imaging.