Multi-Model Analysis of Mammograms

Authors

  • Vijaylaxmi K. Kochari Bharatesh College of Computer Applications, Belagavi, Karnataka, India

DOI:

https://doi.org/10.26438/ijcse/v9i1.3035

Keywords:

Mammograms, pre-process, SVM, FFBPNN

Abstract

In this paper mammogram classification is introduced. The system takes mammogram, pre-processes it by applying Adaptive Histogram Equalization. The enhanced image is segmented using K Means Clustering algorithm. Statistical features such as standard deviation and mean of a segmented mammogram are extracted. SVM takes these features as input. DCT is applied on the segmented mammogram, these extracted features are fed as input to FFBPNN. These classify the mammogram as normal or abnormal. The training time of both the classifiers are compared to know which classifier takes less training time. The accuracy of the classifiers are determined by analyzing the results.

References

[1] S. Shanthi, V. Murali Bhaskaran, “Computer aided detection and classification of mammogram using self-adaptive resource allocation network classifier”, Proceedings of the International Conference on Pattern Recognition, Informatics and Medical Engineering , March 21-23, 2012

[2] Vijaylaxmi Kochari “Feed Forward Back Propagation Neural Network for Detection of Breast Cancer” International Journal of Computer Science Trends and Technology (IJCST) – Volume 6 Issue 6, Nov-Dec 2018, ISSN : 2347-8578.

[3] K Menaka, S Karpagavalli , “Mammogram Classification using Extreme Learning Machine and Genetic Programming,” International Conference on Computer Communication and Informatics (ICCCI -2014), Jan. 03 – 05, 2014

[4] Digambar A Kulkarni, Vijaylaxmi K Kochari “Detection of Breast Cancer Using K Means Algorithm” International Journal of Emerging Technology and Advanced Engineering Website: www.ijetae.com (ISSN 2250-2459, ISO 9001:2008 Certified Journal, Volume 6, Issue 4, April 2016.

[5] S .Bhadra “Analysis of Tumor Detection Methods for Mammogram Images” International Journal Of Computer Science and Engineering Vol.- 7, Issue- 5, May 2019 E-ISSN : 2347-2693

[6] M Arfan Jaffar, Nawazish Naveed, Sultan Zia, Bilal Ahmed and Tae-Sun Choi, “DCT Features Based Malignancy and Abnormality Type Detection Method For Mammograms” International Journal of Innovative Computing, Information and Control Volume 7, No.9, September 2011.

[7] Leonardo de Oliveira Martins, Geraldo Braz Junior, Aristofanes Correa Silva,Anselmo Cardoso de Paiva, and Marcelo Gattass_, “Detection of Masses in Digital Mammograms using K-means and Support Vector Machine”, Electronic Letters on Computer Vision and Image Analysis 8(2):39-50, 2009

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Published

2021-01-31
CITATION
DOI: 10.26438/ijcse/v9i1.3035
Published: 2021-01-31

How to Cite

[1]
V. K. Kochari, “Multi-Model Analysis of Mammograms”, Int. J. Comp. Sci. Eng., vol. 9, no. 1, pp. 30–35, Jan. 2021.

Issue

Section

Research Article