A local contrast fusion based 3D Otsu algorithm for multilevel image segmentation

To overcome the shortcomings of 1D and 2D Otsuʼ s thresholding techniques, the 3D Otsu method has been developed. Among all Otsuʼ s methods, 3D Otsu technique provides the best threshold values for the multi-level thresholding processes. In this paper, to improve the quality of segmented images, a simple and effective multilevel thresholding method is introduced. The proposed approach focuses on preserving edge detail by computing the 3D Otsu along the fusion phenomena. The advantages of the presented scheme include higher quality outcomes, better preservation of tiny details and boundaries and reduced execution time with rising threshold levels. The fusion approach depends upon the differences between pixel intensity values within a small local space of an image; it aims to improve localized information after the thresholding process. The fusion of images based on local contrast can improve image segmentation performance by minimizing the loss of local contrast, loss of details and gray-level distributions. Results show that the proposed method yields more promising segmentation results when compared to conventional 1D Otsu, 2D Otsu and 3D Otsu methods, as evident from the objective and subjective evaluations.

[1]  Kankanala Srinivas,et al.  Cuttlefish Algorithm-Based Multilevel 3-D Otsu Function for Color Image Segmentation , 2020, IEEE Transactions on Instrumentation and Measurement.

[2]  Jianqi Li,et al.  A novel generalized entropy and its application in image thresholding , 2017, Signal Process..

[3]  Zhong Yang,et al.  A New Iterative Triclass Thresholding Technique in Image Segmentation , 2014, IEEE Transactions on Image Processing.

[4]  Liu Jianzhuang,et al.  Automatic thresholding of gray-level pictures using two-dimension Otsu method , 1991, China., 1991 International Conference on Circuits and Systems.

[5]  Ashish Kumar Bhandari,et al.  A novel beta differential evolution algorithm-based fast multilevel thresholding for color image segmentation , 2018, Neural Computing and Applications.

[6]  Ching Y. Suen,et al.  A recursive thresholding technique for image segmentation , 1998, IEEE Trans. Image Process..

[7]  R. Fisher THE USE OF MULTIPLE MEASUREMENTS IN TAXONOMIC PROBLEMS , 1936 .

[8]  N. Otsu A threshold selection method from gray level histograms , 1979 .

[9]  Ashish Kumar Bhandari,et al.  A novel local contrast fusion-based fuzzy model for color image multilevel thresholding using grasshopper optimization , 2019, Appl. Soft Comput..

[10]  Jing Xiao Image Segmentation Based on 3-D Maximum Between-Cluster Variance , 2003 .

[11]  Josef Kittler,et al.  Minimum error thresholding , 1986, Pattern Recognit..

[12]  Ashish Kumar Bhandari,et al.  Modified artificial bee colony based computationally efficient multilevel thresholding for satellite image segmentation using Kapur's, Otsu and Tsallis functions , 2015, Expert Syst. Appl..

[13]  Ashish Kumar Bhandari,et al.  MFO-based thresholded and weighted histogram scheme for brightness preserving image enhancement , 2019, IET Image Process..

[14]  Ashish Kumar Bhandari,et al.  Cuckoo search algorithm and wind driven optimization based study of satellite image segmentation for multilevel thresholding using Kapur's entropy , 2014, Expert Syst. Appl..

[15]  R. Kayalvizhi,et al.  Optimal multilevel thresholding using bacterial foraging algorithm , 2011, Expert Syst. Appl..

[16]  Jian Hou,et al.  A robust 2D Otsu's thresholding method in image segmentation , 2016, J. Vis. Commun. Image Represent..

[17]  Bahriye Akay,et al.  A study on particle swarm optimization and artificial bee colony algorithms for multilevel thresholding , 2013, Appl. Soft Comput..

[18]  Ashish Kumar Bhandari,et al.  A context sensitive Masi entropy for multilevel image segmentation using moth swarm algorithm , 2019, Infrared Physics & Technology.

[19]  Pankaj Kandhway,et al.  Spatial context-based optimal multilevel energy curve thresholding for image segmentation using soft computing techniques , 2019, Neural Computing and Applications.

[20]  Chengwei Li,et al.  Histogram-based image segmentation using variational mode decomposition and correlation coefficients , 2017, Signal, Image and Video Processing.

[21]  Ashish Kumar Bhandari,et al.  A context sensitive energy thresholding based 3D Otsu function for image segmentation using human learning optimization , 2019, Appl. Soft Comput..

[22]  A. Bouridane,et al.  Two modified Otsu image segmentation methods based on Lognormal and Gamma distribution models , 2012, 2012 International Conference on Information Technology and e-Services.

[23]  Ashish Kumar Bhandari,et al.  Social Spider Optimization Based Optimally Weighted Otsu Thresholding for Image Enhancement , 2018 .

[24]  Pankaj Kandhway,et al.  Modified clipping based image enhancement scheme using difference of histogram bins , 2019, IET Image Process..

[25]  Ashish Kumar Bhandari,et al.  Backtracking search algorithm for color image multilevel thresholding , 2018, Signal Image Video Process..

[26]  Xin Xu,et al.  A solution to the deficiencies of image enhancement , 2010, Signal Process..

[27]  Xiongfei Li,et al.  A multi-scale 3D Otsu thresholding algorithm for medical image segmentation , 2017, Digit. Signal Process..

[28]  G. Deng,et al.  An Entropy Interpretation of the Logarithmic Image Processing Model With Application to Contrast Enhancement , 2009, IEEE Trans. Image Process..

[29]  M Jourlin,et al.  Contrast definition and contour detection for logarithmic images , 1989, Journal of microscopy.