The main purpose of this paper is to classify the microscopic cervical images in order to identify the true impact of cancer that helps the patient to be treated properly. The Pap smear test is most efficient medical test, but it generates problem at the time of interpretation under the microscope. In order to unravel this drawback, automatic cancer detection is developed. This detection process includes few techniques of the image processing such as segmentation, and enhanced SVM classification algorithm. The final outcome of this proposed technique is compared to previous classification techniques such as ANN (Artificial Neural Network), KNN (K-Nearest Neighbor). The proposed algorithm is found to yield a good result from the experimental results & performance evaluation.
CITATION STYLE
Robert, P., & Celine Kavida, A. (2019). Classification of microscopic cervical cancer images using regional features and HSI model. International Journal of Innovative Technology and Exploring Engineering, 8(8), 24–28.
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