Segmentasi Citra Kanker Serviks Menggunakan Markov Random Field dan Algoritma K-Means
Dublin Core
Title
Segmentasi Citra Kanker Serviks Menggunakan Markov Random Field dan Algoritma K-Means
Subject
cervical cancer, k-means clustering, k-nearest neighbor, markov random field, pap smear
Description
Cervical cancer is a dangerous disease caused by malignant tumors that grow on the cervix and has globally attacked many women. Pap smear test is one of the early prevention efforts for cervical cancer. Medical personnel often have difficulty identifying images of cervical cancer cells. Several studies have used the K-Means clustering method to identify cervical cancer cell images from Herlev dataset. This study uses the Herlev dataset with the K-Means clustering algorithm and alsoused the Markov Random Field parameter as a feature for the process of identifying cervical cancer cell images. This study compared the results of the proposed method with some differences in the preprocessing process. The experimentalresults show an accuracy of 74,51% for RGB channels without low pass filter. Accuracy of 75,11% is obtained from the segmentation process using RGB channels with low pass filter. A further increase in accuracy was obtained by 75,76% when the segmentation process used the grayscale channel with low pass Filter. Based on the segmentation experiment with the highestsegmentationaccuracy results, the classification process using K-Nearest Neighbor(KNN)gives an accuracy of 89,29%.
Creator
Raihana Salsabila Darma Wijaya1, Adiwijaya2, Andriyan B Suksmono3, Tati LR Mengko4
Source
https://jurnal.iaii.or.id/index.php/RESTI/issue/view/20
Publisher
Universitas Telkom
Date
20 Februari 2021
Contributor
Fajar bagus W
Format
PDF
Language
Indonesia
Type
Text
Files
Collection
Citation
Raihana Salsabila Darma Wijaya1, Adiwijaya2, Andriyan B Suksmono3, Tati LR Mengko4, “Segmentasi Citra Kanker Serviks Menggunakan Markov Random Field dan Algoritma K-Means,” Repository Horizon University Indonesia, accessed May 18, 2025, https://repository.horizon.ac.id/items/show/8554.