International Journal of Advances in Intelligent Informatics
Vol 12, No 2 (2026): May 2026

Comparison of SVM kernels in brain tumor image classification using GLCM feature extraction

I Gede Susrama Mas Diyasa (Universitas Pembangunan Nasional Veteran Jawa Timur)
Kraugusteeliana Kraugusteeliana (Department of Information Systems, Faculty of Computer Science, University of Pembangunan Nasional “Veteran” Jakarta, Jakarta, Indonesia)
Hanif Nur Fadlilah (Department of Informatics, Faculty of Computer Science, University of Pembangunan Nasional “Veteran” Jawa Timur, Surabaya, Indonesia)
Yisti Vita Via (Department of Informatics, Faculty of Computer Science, University of Pembangunan Nasional “Veteran” Jawa Timur, Surabaya, Indonesia)
Anita Muliawati (Department of Information Systems, Faculty of Computer Science, University of Pembangunan Nasional “Veteran” Jakarta, Jakarta, Indonesia)
Allan Ruhui Fatmah Sari (Department of Informatics, Faculty of Computer Science, University of Pembangunan Nasional “Veteran” Jawa Timur, Surabaya, Indonesia)
Erna Harfiani (Department of Medicine, Faculty of Medicine, University of Pembangunan Nasional “Veteran” Jakarta, Jakarta, Indonesia)
Ni Made Ika Marini Mandenni (Department of Information Technology, Udayana University, Denpasar, Bali)
Deshinta Arrova Dewi (Center for Data Science and Sustainable Technologies, INTI International University, Malaysia)



Article Info

Publish Date
31 May 2026

Abstract

The human brain plays a vital role in regulating bodily functions, and abnormal cell growth may lead to life-threatening brain tumors. Automated computer-aided diagnosis systems are therefore essential to support early detection from MRI images. This study investigates brain tumor classification using Gray Level Co-occurrence Matrix (GLCM) feature extraction combined with Support Vector Machine (SVM) classification. Unlike prior works that typically employ a single kernel configuration, this study conducts a systematic comparison of four SVM kernels linear, polynomial, radial basis function (RBF), and sigmoid under a consistent preprocessing pipeline and structured hyperparameter tuning framework. GLCM features including energy, contrast, correlation, and homogeneity were extracted at multiple distances and angles. Kernel performance was evaluated using controlled hyperparameter search procedures to ensure fair comparison across models. Experimental results on a binary MRI dataset consisting of 2,800 images demonstrate that the RBF kernel achieved the highest accuracy of 96% with C = 100 and gamma = 10, outperforming polynomial (74%), linear (72%), and sigmoid (71%) kernels. The findings highlight the importance of systematic kernel evaluation and parameter sensitivity analysis in texture-based medical image classification. The proposed GLCM–SVM framework provides a computationally efficient and interpretable approach that may support preliminary decision-aid systems for brain tumor screening.

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Journal Info

Abbrev

IJAIN

Publisher

Subject

Computer Science & IT

Description

International journal of advances in intelligent informatics (IJAIN) e-ISSN: 2442-6571 is a peer reviewed open-access journal published three times a year in English-language, provides scientists and engineers throughout the world for the exchange and dissemination of theoretical and ...