Ultrafuzziness Optimization Based on Type II Fuzzy Sets for Image Thresholding
AbstractImage thresholding is one of the processing techniques to provide high quality preprocessed image. Image vagueness and bad illumination are common obstacles yielding in a poor image thresholding output. By assuming image as fuzzy sets, several different fuzzy thresholding techniques have been proposed to remove these obstacles during threshold selection. In this paper, we proposed an algorithm for thresholding image using ultrafuzziness optimization to decrease uncertainty in fuzzy system by common fuzzy sets like type II fuzzy sets. Optimization was conducted by involving ultrafuzziness measurement for background and object fuzzy sets separately. Experimental results demonstrated that the proposed image thresholding method had good performances for images with high vagueness, low level contrast, and grayscale ambiguity.
Otsu, N., A threshold selection method from grey-level histograms, IEEE Trans. Systems Man Cybern., 9, 62-66, 1979.
Rosin, P.L., Unimodal thresholding, Pattern Recognition 34(11), 2083â€“2096, 2001.
Hamid R. Tizhoosh, Image tresholding using type II fuzzy sets, Pattern Recognition, 38, 2363-2372, 2005.
Pal, S.K. & Rosenfeld, A., Image enhancement and thresholding by optimization of fuzzy compactness, Pattern Recognition Lett., 7, 77â€“86, 1988.
Arifin, A.Z. & Asano, A., Image thresholding by measuring the fuzzy sets similarity, Proc. Information and Communication Technology Seminar 2005, pp. 189-194, 2005.
Sankur, B. & Sezgin, M., Survey over image thresholding techniques andquantitati ve performance evaluation, J. Electron. Imaging, 13(1), 146â€“165, 2004.
Lodwick, Weldon A., Introduction to Fuzzy Set Theory, Introduction: Math Clinic Fall 38 slides, 2003.
Mendel, J.M. & Bob John, R.I., Type-2 fuzzy sets made simple, IEEE Trans. Fuzzy Syst., 10(2), 117â€“127, 2002.
Bustince, H., Barrenechea, E., Pagola, M., Fernandez, J. & Sanz, J., Comment on: Image thresholding using type II fuzzy sets. Importance of this method, Pattern Recognition, 43, 3188â€“3192, 2010.
Bustincea, H.S., Pagolaa, M., Tartas, E.B., FernÃ¡ndez, J., Melo-Pinto, P., Couto, P., Tizhooshc, H.R. & Montero, J., Ignorance functions. An application to the calculation of the threshold in prostate ultrasound images, Fuzzy Sets and Systems, 161(1), 20-36, 2010.
Arifin, A.Z., Asano, A., Taguchi, A., Nakamoto, T., Ohtsuka, M., Ohtsuka, M., Tsuda, M., Kudo, Y. & Tanimoto, K., Computer-aided system for measuring
Zadeh, L.A., Fuzzy sets, Inf. Control, 8, 338â€“353, 1965.
the mandibular cortical width on panoramic radiographs in identifying postmenopausal women with low bone mineral density. Osteoporos Int., 17, 753-9, 2006.