Abstract
Background: Mammogram images are low dose x-ray images which detect the breast cancer before the women can actually experience it.
Objective: To determine the accurate methodology for feature extraction using different wavelet families and different classification algorithms.
Methods: Two wavelet families are used namely Daubechies (db8) and Biorthogonal (bior3.7). The Gray-Level Co-occurrence Matrix is used for extracting 9 features at each sub-band. 27 features are extracted at three sub-bands of Discrete Wavelet Transform. The features are extracted at three levels of decomposition and after that the classification algorithm named as Naive Bayes, Multilayer Perceptron, Fuzzy-NN and Genetic Programming are applied to extracted features. The feature selection algorithms are applied named as Wavelet and Principle Component Analysis for selecting the features and then classification accuracy is determined and compared between these.
Results: Mammographic Image Analysis Society, database including 322 mammogram images from 161 patients is used. The classification algorithm without feature selection named as Fuzzy-NN gives better results at the third level of decomposition having classification accuracy for db8 wavelet family up to 99.68% and for bior3.7 wavelet family up to 99.98%. Wavelet with Multilayer Perceptron using feature selection algorithm gives the classification accuracy for db8 wavelet family up to 96.27% and for bior3.7 up to 93.47%.
Conclusion: Fuzzy-NN algorithm gives highest accuracy of 99.98% for bior3.7 wavelet family. It indicates that with feature selection and without feature selection, the wavelet families differ as db8 is better consideration for with feature selection and bior3.7 wavelet family for without feature selection.
Keywords: Wavelet family, Gray Level Co-occurrence Matrix (GLCM), classification, discrete wavelet transform, mammogram images, cancer.
Graphical Abstract
Recent Advances in Computer Science and Communications
Title:Analysis of Performance of Two Wavelet Families Using GLCM Feature Extraction for Mammogram Classification of Breast Cancer
Volume: 14 Issue: 6
Author(s): Shivangi Singla*Uma Kumari
Affiliation:
- Department of Computer Science and Engineering, Mody University of Science and Technology, Lakshmangarh, Sikar, Rajasthan-332311,India
Keywords: Wavelet family, Gray Level Co-occurrence Matrix (GLCM), classification, discrete wavelet transform, mammogram images, cancer.
Abstract:
Background: Mammogram images are low dose x-ray images which detect the breast cancer before the women can actually experience it.
Objective: To determine the accurate methodology for feature extraction using different wavelet families and different classification algorithms.
Methods: Two wavelet families are used namely Daubechies (db8) and Biorthogonal (bior3.7). The Gray-Level Co-occurrence Matrix is used for extracting 9 features at each sub-band. 27 features are extracted at three sub-bands of Discrete Wavelet Transform. The features are extracted at three levels of decomposition and after that the classification algorithm named as Naive Bayes, Multilayer Perceptron, Fuzzy-NN and Genetic Programming are applied to extracted features. The feature selection algorithms are applied named as Wavelet and Principle Component Analysis for selecting the features and then classification accuracy is determined and compared between these.
Results: Mammographic Image Analysis Society, database including 322 mammogram images from 161 patients is used. The classification algorithm without feature selection named as Fuzzy-NN gives better results at the third level of decomposition having classification accuracy for db8 wavelet family up to 99.68% and for bior3.7 wavelet family up to 99.98%. Wavelet with Multilayer Perceptron using feature selection algorithm gives the classification accuracy for db8 wavelet family up to 96.27% and for bior3.7 up to 93.47%.
Conclusion: Fuzzy-NN algorithm gives highest accuracy of 99.98% for bior3.7 wavelet family. It indicates that with feature selection and without feature selection, the wavelet families differ as db8 is better consideration for with feature selection and bior3.7 wavelet family for without feature selection.
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Cite this article as:
Singla Shivangi *, Kumari Uma , Analysis of Performance of Two Wavelet Families Using GLCM Feature Extraction for Mammogram Classification of Breast Cancer, Recent Advances in Computer Science and Communications 2021; 14 (6) . https://dx.doi.org/10.2174/2666255813666191218111850
DOI https://dx.doi.org/10.2174/2666255813666191218111850 |
Print ISSN 2666-2558 |
Publisher Name Bentham Science Publisher |
Online ISSN 2666-2566 |

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