2018
DOI: 10.22146/ijeis.34713
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Brain Tumor Classification Using Gray Level Co-occurrence Matrix and Convolutional Neural Network

Abstract: Image are objects that have many information. Gray Level Co-occurrence Matrix is one of many ways to extract information from image objects. Wherein, the extracted informations can be processed again using different methods, Gray Level Co-occurrence Matrix is use for clarifying brain tumor using Convolutional Neural Network. The scope in this research is to process the extracted information from Gray Level Co-occurrence Matrix to Convolutional Neural Network where it will processed as Deep Learning to measure … Show more

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Cited by 47 publications
(18 citation statements)
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References 12 publications
(17 reference statements)
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“…While the proposed CNN classifier achieved an accuracy rate of 98.93% and a sensitivity rate of 98.18% for cropped lesions, for uncropped it showed a 99% accuracy and 98.52% sensitivity rate, for segmented lesions its accuracy rate was 97.62%. Widhiarso et al [24], in 2018; presented a brain tumor classification model using CNN and GLCM (Gray Level Co-Occurrence Matrix). The study extracted energy, correlation, contrast, and homogeneity features from four different angles for each image.…”
Section: Related Workmentioning
confidence: 99%
“…While the proposed CNN classifier achieved an accuracy rate of 98.93% and a sensitivity rate of 98.18% for cropped lesions, for uncropped it showed a 99% accuracy and 98.52% sensitivity rate, for segmented lesions its accuracy rate was 97.62%. Widhiarso et al [24], in 2018; presented a brain tumor classification model using CNN and GLCM (Gray Level Co-Occurrence Matrix). The study extracted energy, correlation, contrast, and homogeneity features from four different angles for each image.…”
Section: Related Workmentioning
confidence: 99%
“…GLCM merupakan suatu metode untuk melakukan ekstraksi ciri berbasis statistikal, perolehan ciri diperoleh dari nilai matriks yang mempunyai nilai tertentu dan membentuk sudut pola. Untuk sudut yang dibentuk dari nilai piksel citra menggunakan GLCM adalah 0º, 45º, 90º, 135º ( [1], [2]). Dari piksel-piksel tersebut terbentuk matrix co-occurance dengan pasangan pikselnya.…”
Section: B Ekstarksi Fiturunclassified
“…The results show that they achieve an accuracy rate of 96.97% and a sensitivity of 97.0 %. Widhiarso, Wijang, Yohannes Yohannes, and Cendy Prakarsah [10] presented a brain tumor classification system using a convolutional neural network (CNN) and Gray Level Co-occurrence Matrix (GLCM) based features. They extracted four features (Energy, Correlation, Contrast, and Homogeneity) from four angles (0°, 45°, 90°, and 135°) for each image and then these features are fed into CNN, they tested their methodology on four different datasets (Mg-Gl, Mg-Pt, Gl-Pt, and Mg-Gl-Pt) and the best accuracy achieved was82.27% for Gl-Pt dataset using two sets of features; contrast with homogeneity and contrast with correlation.…”
Section: Literature Reviewmentioning
confidence: 99%
“…However, if the physician suspects a brain tumor and they require more information about its type, a surgical biopsy from the suspected tissue (tumor) is necessary for a detailed diagnosis by the specialist. These different technologies in brain tissue imaging have increased over recent years for image contrast and resolution enhancement which allows the radiologist to identify even small lesions and therefore achieving higher diagnosis accuracy [7,8,9,10]. Combining (fusing) the images acquired from different imaging modalities and benefiting the recent advances of engineering technologies that enhance the accuracy of brain tumor detection in the field of artificial intelligence (AI) for computer vision applications, where AI can be integrated with these imaging modalities to build a computer-aided diagnosis (CAD) systems.…”
Section: Introductionmentioning
confidence: 99%