Commenced in January 2007
Frequency: Monthly
Edition: International
Paper Count: 33122
Liver Tumor Detection by Classification through FD Enhancement of CT Image
Authors: N. Ghatwary, A. Ahmed, H. Jalab
Abstract:
In this paper, an approach for the liver tumor detection in computed tomography (CT) images is represented. The detection process is based on classifying the features of target liver cell to either tumor or non-tumor. Fractional differential (FD) is applied for enhancement of Liver CT images, with the aim of enhancing texture and edge features. Later on, a fusion method is applied to merge between the various enhanced images and produce a variety of feature improvement, which will increase the accuracy of classification. Each image is divided into NxN non-overlapping blocks, to extract the desired features. Support vector machines (SVM) classifier is trained later on a supplied dataset different from the tested one. Finally, the block cells are identified whether they are classified as tumor or not. Our approach is validated on a group of patients’ CT liver tumor datasets. The experiment results demonstrated the efficiency of detection in the proposed technique.Keywords: Fractional differential (FD), Computed Tomography (CT), fusion.
Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1110800
Procedia APA BibTeX Chicago EndNote Harvard JSON MLA RIS XML ISO 690 PDF Downloads 1685References:
[1] Weimin Huang; Ning Li; Ziping Lin; Guang-Bin Huang; Weiwei Zong; Jiayin Zhou; Yuping Duan, "Liver tumor detection and segmentation using kernel-based extreme learning machine," Engineering in Medicine and Biology Society (EMBC), 35th Annual International Conference of the IEEE, vol., no., pp.3662, 3665, 3-7 July 2013.
[2] Zhang, Xing, Jie Tian, Dehui Xiang, Xiuli Li, and Kexin Deng. "Interactive liver tumor segmentation from ct scans using support vector classification with watershed." In Engineering in Medicine and Biology Society, EMBC, 2011 Annual International Conference of the IEEE, pp. 6005-6008, 2011.
[3] Kumar, S.S.; Moni, R.S.; Rajeesh, J., "Liver tumor diagnosis by gray level and contourlet coefficients texture analysis," Computing, Electronics and Electrical Technologies (ICCEET), 2012 International Conference on, vol., no., pp.557-562, 21-22 March 2012
[4] Maini, Raman, and Himanshu Aggarwal. "A comprehensive review of image enhancement techniques." Volume 2, Issue 3, March 2010.
[5] Sabatier, J., Om P. Agrawal, and JA Tenreiro Machado. Advances in fractional calculus. Vol. 4, no. 9. Dordrecht: Springer, 2007.
[6] Yi-fei, Pu, Wang Wei-xing, Zhou Ji-liu, Wang Yi-yang, and Jia Huading. "Fractional-order derivative detection of texture of image and the realize of fractional-order derivative filtering." Science in China, vol. 38, no. 12 pp. 2252-2272, 2008.
[7] Yi-Fei Pu; Ji-Liu Zhou; Xiao Yuan, "Fractional Differential Mask: A Fractional Differential-Based Approach for Multiscale Texture Enhancement," Image Processing, IEEE Transactions on, vol.19, no.2, pp.491,511, Feb. 2010
[8] Jalab, Hamid A., and Rabha W. Ibrahim. "Texture enhancement for medical images based on fractional differential masks." Discrete Dynamics in Nature and Society, pp. 1-10, 2013.
[9] Si, MaoXin, Ligang Fang, Fuyuan Hu, and Shaohui Si. "Texture enhancement algorithm based on fractional differential mask of adaptive non-integral step." In Image and Signal Processing (CISP), 2014 7th International Congress on, pp. 179-183, 2014.
[10] Zhang, Jun, Zhihui Wei, and Liang Xiao. "A fast adaptive reweighted residual-feedback iterative algorithm for fractional-order total variation regularized multiplicative noise removal of partly-textured images." Signal Processing Vol.98, pp.381-395, 2014.
[11] Chan, R. H., A. Lanza, S. Morigi, and F. Sgallari. "An adaptive strategy for the restoration of textured images using fractional order regularization." Numerical Mathematics: Theory, Methods & Application, vol. 6, no. 1, 2013.
[12] Yu, Qiang, Fawang Liu, Ian Turner, Kevin Burrage, and Viktor Vegh. "The use of a Riesz fractional differential-based approach for texture enhancement in image processing." ANZIAM Journal, vol. 54, pp. 590- 607, 2013.
[13] Castellano, G., L. Bonilha, L. M. Li, and F. Cendes. "Texture analysis of medical images." Clinical radiology 59, no. 12, pp. 1061-1069, 2004.
[14] James, Alex Pappachen, and Belur V. Dasarathy. "Medical image fusion: A survey of the state of the art." Information Fusion, Vol 19, pp. 4-19, 2014
[15] J. R. Smith and S. F. Chang, “Automated binary texture feature sets for image retrieval,” in Proceedings of the IEEE International Conference on Acoustics, Speech, and Signal Processing (ICASSP ’96), pp. 2239– 2242, May 1996
[16] Srinivasan, G. N., and G. Shobha. "Statistical texture analysis." In Proceedings of world academy of science, engineering and technology, vol. 36, pp. 1264-1269. 2008.
[17] Kezia, Saka, I. Santi Prabha, and V. VijayaKumar. "A New Texture Segmentation Approach for Medical Images." International Journal of Scientific & Engineering Research, 4,2013.