Glioma Brain Tumor Classification using Transfer Learning

dc.contributor.authorPongsak Pilaoon
dc.contributor.authorAthasart Narkthewan
dc.contributor.authorNoppanat Wadlom
dc.contributor.authorRuttikorn Varakulsiripunth
dc.contributor.authorKazuhiko Hamamoto
dc.contributor.authorNoppadol Maneerat
dc.date.accessioned2026-05-08T19:21:15Z
dc.date.issued2024-5-1
dc.description.abstractIn this research the glioma brain tumor binary classification using transfer learning was introduced. The MRI image from 2 datasets comprised with REMBRANDT and BraTS2021 with increasing number of MRI images was proposed to prevent overfitting problem. MRI images were converted to JPEG format and heavily imbalanced with normal brain image is minority class. Morphological operation was used to remove skeletons and artifacts from brain region. We have introduced Contrast Limited Adaptive Histogram Equalization to preprocess and enhance contrast before classify using various CNNs. To handle imbalanced dataset problem, we proposed image augmentation to increase the number of images and obtain balanced dataset. The various CNNs transfer learning was implemented to classify glioma brain tumor. Finally, the best classifier is InceptionV3 with balanced dataset that obtained accuracy 99.19%, sensitivity 98.83%, and specificity 100% respectively, better than our past research work.
dc.identifier.doi10.1109/iceast61342.2024.10553834
dc.identifier.urihttps://dspace.kmitl.ac.th/handle/123456789/17925
dc.subjectBrain Tumor Detection and Classification
dc.subjectMachine Learning and ELM
dc.subjectAdvanced Neural Network Applications
dc.titleGlioma Brain Tumor Classification using Transfer Learning
dc.typeArticle

Files

Collections