Perfecting a Video Game with Game Metrics
Vol 18, No 3: June 2020

UNet-VGG16 with transfer learning for MRI-based brain tumor segmentation

Anindya Apriliyanti Pravitasari (Institut Teknologi Sepuluh Nopember)
Nur Iriawan (Institut Teknologi Sepuluh Nopember)
Mawanda Almuhayar (Institut Teknologi Sepuluh Nopember)
Taufik Azmi (Institut Teknologi Sepuluh Nopember)
Irhamah Irhamah (Institut Teknologi Sepuluh Nopember)
Kartika Fithriasari (Institut Teknologi Sepuluh Nopember)
Santi Wulan Purnami (Institut Teknologi Sepuluh Nopember)
Widiana Ferriastuti (Universitas Airlangga)



Article Info

Publish Date
01 Jun 2020

Abstract

A brain tumor is one of a deadly disease that needs high accuracy in its medical surgery. Brain tumor detection can be done through magnetic resonance imaging (MRI). Image segmentation for the MRI brain tumor aims to separate the tumor area (as the region of interest or ROI) with a healthy brain and provide a clear boundary of the tumor. This study classifies the ROI and non-ROI using fully convolutional network with new architecture, namely UNet-VGG16. This model or architecture is a hybrid of U-Net and VGG16 with transfer Learning to simplify the U-Net architecture. This method has a high accuracy of about 96.1% in the learning dataset. The validation is done by calculating the correct classification ratio (CCR) to comparing the segmentation result with the ground truth. The CCR value shows that this UNet-VGG16 could recognize the brain tumor area with a mean of CCR value is about 95.69%.

Copyrights © 2020






Journal Info

Abbrev

TELKOMNIKA

Publisher

Subject

Computer Science & IT

Description

Submitted papers are evaluated by anonymous referees by single blind peer review for contribution, originality, relevance, and presentation. The Editor shall inform you of the results of the review as soon as possible, hopefully in 10 weeks. Please notice that because of the great number of ...