http://www.iaeme.com/IJARET/index.asp 687 editor@iaeme.com
International Journal of Advanced Research in Engineering and Technology (IJARET)
Volume 11, Issue 12, December 2020, pp.687-701, Article ID: IJARET_11_12_071
Available online at http://www.iaeme.com/IJARET/issues.asp?JType=IJARET&VType=11&IType=12
ISSN Print: 0976-6480 and ISSN Online: 0976-6499
DOI: 10.34218/IJARET.11.12.2020.071
© IAEME Publication Scopus Indexed
BREAST CANCER DETECTION TECHNIQUE
BASED ON MULTI-SUBSPACE
RANDOMIZATION AND COLLABORATION
FEATURE SELECTION
Sachinkumar
Department of Electronics and Communication Engineering,
VTU RRC, VTU, Belagavi, India
Dr. Sarika Raga
VTU PG Centre, Muddenahalli, Chickballapur, India
ABSTRACT
Breast cancer is one of the common cancer among women and early detection of
breast cancer helps in better treatment. Many researches have been conducted to
detect breast cancer with high efficiency, but still it is challenging in providing
classifier for efficient performance of the breast cancer detection. In this research, the
Unsupervised Feature Selection with Multi-Subspace Randomization and
Collaboration (MSRC) is proposed to improve the detection performance. The
proposed MSRC method has the ability to explore the various subspaces features of
the image. In the pre-processing process, the normalization and Adaptive Histogram
equalization are applied to enhance the contrast of the image. Region growing and
Otsu threshold segmentation are applied to select the neighborhood pixels in the
image. The Kernal Fuzzy C-Means (KFCM) is used to select the features from the
images. The advantage of using Region growing, Otsu threshold and KFCM method in
segmentation is that provide clear edge segmentation based on intensity value. The
Dual-Tree Complex Wavelet Transform (DTCWT), Weber Local Descriptor and Grey-
Level Co-occurrence Matrix (GLCM) methods are used to extract features from the
MRI breast cancer images. The combination of DTCWT, Weber Local Descriptor and
GLCM has the advantage of extract the features based on histogram, gradient and
orientation. The Support Vector Machine (SVM) classifier is used to detect the breast
cancer in the image. The SVM provides the clear margin based on selected and
extracted features and more efficient in high dimensional space. The experimental
analysis shows that the proposed MSRC method.