Efficient fuzzy c-means based multilevel image segmentation for brain tumor detection in MR images

S Shanmugapriya1, A. Valarmathi2
1Department of CSE, M.I.E.T Engineering College, Tiruchirappalli, India
2Department of Computer Application, Anna University, BIT Campus, Tiruchirappalli, India

Tóm tắt

Từ khóa


Tài liệu tham khảo

Leibfarth S, Eckert F, Welz S, Siegel C, Schmidt H, Schwenzer N, Zips D, Thorwarth D (2015) Automatic delineation of tumor volumes by co-segmentation of combined PET/MR data. Phys Med Biol 60(14):5399–5412

Zaidi H (2014) Molecular imaging of small animals. Springer, New York

Sikka K, Sinha N, Singh PK, Mishra AK (2009) A fully automated algorithm under modified FCM framework for improved brain MR image segmentation. Magn Reson Imaging 27(7):994–1004

Corso JJ, Sharon E, Dube S, El-Saden S, Sinha U, Yuille A (2008) Efficient multilevel brain tumor segmentation with integrated Bayesian model classification. IEEE Trans Med Imaging 27(5):629–640

Jiménez-Alaniz JR, Medina-Bañuelos V, Yáñez-Suárez O (2006) Data-driven brain MRI segmentation supported on edge confidence and a priori tissue information. IEEE Trans Med Imaging 25(1):74–83

Iftekharuddin KM, Zheng J, Islam MA, Ogg RJ (2009) Fractal-based brain tumor detection in multimodal MRI. Appl Math Comput 207:23–41

Dou W, Ruan S, Chen Y, Bloyet D, Constans J-M (2007) A framework of fuzzy information fusion for the segmentation of brain tumor tissues on MR images. Image Vis Comput 25:164–171

Zhang N, Ruan S, Lebonvallet S, Liao Q, Zhu Y (2011) Kernel feature selection to fuse multi-spectral MRI images for brain tumor segmentation. Comput Vis Image Underst 115:256–269

Vrooman HA, Cocosco CA, Lijn F, Stokking R, Ikram MA, Vernooij MW, Breteler MMB, Niessen WJ (2007) Multi-spectral brain tissue segmentation using automatically trained k-nearest-neighbor classification. NeuroImage 37:71–81

Prastawa M, Bullitt E, Ho S, Gerig G (2004) A brain tumor segmentation framework based on outlier detection. Med Image Anal 8:275–283

Satheeskumaran S, Sabrigiriraj M (2015) VLSI implementation of a new LMS-based algorithm for noise removal in ECG signal. Int J Electron 103:975–984

Prakash S (2007) Multiple textured objects segmentation using DWT based texture features in geodesic active contour. Proc Int Conf Comput Intell Multimed Appl 2:532–536

Satheeskumaran S, Sabrigiriraj M (2014) A new LMS based noise removal and DWT based R-peak detection in ECG signal for biotelemetry applications. Natl Acad Sci Lett 37(4):341–349

Demirhan A, Güler İ (2011) Combining stationary wavelet transform and self-organizing maps for brain MR image segmentation. Eng Appl Artific Intell 24:358–367

Do MN, Vetterli M (2005) The contourlet transform: an efficient directional multiresolution image representation. IEEE Trans Image Process 14(12):2091–2106

Kohonen T (2002) The self-organizing maps, 3rd edn. Springer, Berlin

Wang F, Zhou YS et al (2011) Multi-policy threshold signature with distinguished signing authorities. J China Univ Posts Telecommun 18(1):113–120

Chen X, Wang R et al (2012) A novel evaluation method based on entropy for image segmentation. Proc Eng 29:3959–3965

Avci E, Avci D (2009) An expert system based on fuzzy entropy for automatic threshold selectioninimageprocessing. Expert Syst Appl 36(2):3077–3085

Kalra PK, Kumar N (2010) A novel automatic micro calcification detection technique using Tsallis entropy & a type II fuzzy index. Comput Math Appl 60(8):2426–2432

Boykov Y, Jolly M (2001) Interactive graph cuts for optimal boundary & region segmentation of objects in ND images. In: Proceedings of the eighth IEEE international conference on computer vision, vol 1, pp 105–112

Caldairou B, Passat N, Habas PA et al (2011) A non-local fuzzy segmentation method: application to brain MRI. Pattern Recognit 44:1916–1927

Krinidis S, Chatzis V (2010) A robust fuzzy local information C-means clustering algorithm. IEEE Trans Image Process 5(19):1328–1337

Graves D, Pedrycz W (2007) Fuzzy C-means, Gustafson-Kessel FCM, and Kernel-based FCM: a comparative study. Adv Soft Comput 41:140–149

Nguyen DD, Ngo LT, Pham LT, Pedrycz W (2015) Towards hybrid clustering approach to data classification: multiple kernels based interval-valued Fuzzy C-Means algorithms. Fuzzy Sets Syst 279:17–39

Ding Y, Fu X (2016) Kernel-based fuzzy c-means clustering algorithm based on genetic algorithm. Neurocomputing 188:233–238

Chen Y, Li J, Zhang H, Zheng Y, Jeon B, Wu QJ (2016) Non-local-based spatially constrained hierarchical fuzzy C-means method for brain magnetic resonance imaging segmentation. IET Image Process 10(11):865–876

Shi F, Wang L, Dai Y et al (2012) Pediatric brain extraction using learning based meta-algorithm. Neuro Image 62:1975–1986

Jubairahmed L, Satheeskumaran S, Venkatesan C (2017) Contourlet transform based adaptive nonlinear diffusion filtering for speckle noise removal in ultrasound images. Clust Comput. https://doi.org/10.1007/s10586-017-1370-x

Devi CN, Chandrasekharan A, Sundararaman VK, Alex ZC (2015) Neonatal brain MRI segmentation: a review. Comput Biol Med 64:163–178

Jeetashree A, Nanda PK, Das N (2016) Modified possibilistic fuzzy C-means algorithms forsegmentation of magnetic resonance image. Appl Soft Comput 41:104–119

Li Y (2014) Wavelet-based fuzzy multiphase image segmentation method. Pattern Recognit Lett 53:1–8

Vasileios Kanas G, Evangelia Zacharakib I, Davatzikosc C, Kyriakos Sgarbasa N, Megalooikonomou V (2015) A low cost approach for brain tumor segmentation based onintensity modeling and 3D Random Walker. Biomed Signal Process Control 22:19–30

IBSR, The Internet brain segmentation repository. http://www.cma.mgh.harvard.edu/ibsr/ . Accessed 21August 2017

Van Ginneken B, Heimann T, Styner M (2007) 3D segmentation in the clinic: a grand challenge, pp 7–15. http://sliver07.org/p7.pdf . Accessed 21August 2017