Seeking multi-thresholds directly from support vectors for image segmentation

Threshold selection is an important topic and also a critical preprocessing step for image analysis, pattern recognition and computer vision. In this letter, a novel automatic image thresholding approach only from the support vectors is proposed. It first fits the 1D histogram of a given image by support vector regression (SVR) to obtain all boundary support vectors and then sifts automatically so-needed (multi-) threshold values directly from the support vectors rather than the optimized extrema of the fitted histogram in which finding the extrema is, in general, difficult. The proposed approach is not only computationally efficient but also does not require prior assumptions whatsoever to be made about the image (type, features, contents, stochastic model, etc.). Such an algorithm is most useful for applications that are supposed to work with different (and possibly initially unknown) types of images. The experimental results demonstrate that the proposed approach can select the thresholds automatically and effectively, and the resulting images can preserve the main features of the components of the original images very well.

[1]  Anil K. Jain,et al.  Goal-Directed Evaluation of Binarization Methods , 1995, IEEE Trans. Pattern Anal. Mach. Intell..

[2]  Kuo-Liang Chung,et al.  Fast adaptive PNN-based thresholding algorithms , 2003, Pattern Recognit..

[3]  A. D. Brink Thresholding of digital images using two-dimensional entropies , 1992, Pattern Recognit..

[4]  Andrew K. C. Wong,et al.  A new method for gray-level picture thresholding using the entropy of the histogram , 1985, Comput. Vis. Graph. Image Process..

[5]  Nello Cristianini,et al.  An Introduction to Support Vector Machines and Other Kernel-based Learning Methods , 2000 .

[6]  Mohamed S. Kamel,et al.  Extraction of Binary Character/Graphics Images from Grayscale Document Images , 1993, CVGIP Graph. Model. Image Process..

[7]  Wen-Hsiang Tsai,et al.  Moment-preserving thresolding: A new approach , 1985, Comput. Vis. Graph. Image Process..

[8]  Thierry Pun,et al.  A new method for grey-level picture thresholding using the entropy of the histogram , 1980 .

[9]  Saeid Belkasim,et al.  Phase-based optimal image thresholding , 2003, Digit. Signal Process..

[10]  Wen-Hsiang Tsai,et al.  Moment-preserving thresholding: a new approach , 1995 .

[11]  Nabih N. Abdelmalek,et al.  Maximum likelihood thresholding based on population mixture models , 1992, Pattern Recognit..

[12]  Bülent Sankur,et al.  The performance evaluation of thresholding algorithms for optical character recognition , 1997, Proceedings of the Fourth International Conference on Document Analysis and Recognition.

[13]  Bir Bhanu,et al.  Automatic Target Recognition: State of the Art Survey , 1986, IEEE Transactions on Aerospace and Electronic Systems.

[14]  Mehmet Sezgin,et al.  A new dichotomization technique to multilevel thresholding devoted to inspection applications , 2000, Pattern Recognit. Lett..

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