Segmentation and Classification of Stomach Abnormalities Using Deep Learning

An automated system is proposed for the detection and classification of GI abnormalities. The proposed method operates under two pipeline procedures: (a) segmentation of the bleeding infection region and (b) classification of GI abnormalities by deep learning. The first bleeding region is segmented...

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Veröffentlicht in:Computers, materials & continua materials & continua, 2021, Vol.69 (1), p.607-625
Hauptverfasser: Naz, Javeria, Attique Khan, Muhammad, Alhaisoni, Majed, Song, Oh-Young, Tariq, Usman, Kadry, Seifedine
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container_issue 1
container_start_page 607
container_title Computers, materials & continua
container_volume 69
creator Naz, Javeria
Attique Khan, Muhammad
Alhaisoni, Majed
Song, Oh-Young
Tariq, Usman
Kadry, Seifedine
description An automated system is proposed for the detection and classification of GI abnormalities. The proposed method operates under two pipeline procedures: (a) segmentation of the bleeding infection region and (b) classification of GI abnormalities by deep learning. The first bleeding region is segmented using a hybrid approach. The threshold is applied to each channel extracted from the original RGB image. Later, all channels are merged through mutual information and pixel-based techniques. As a result, the image is segmented. Texture and deep learning features are extracted in the proposed classification task. The transfer learning (TL) approach is used for the extraction of deep features. The Local Binary Pattern (LBP) method is used for texture features. Later, an entropy-based feature selection approach is implemented to select the best features of both deep learning and texture vectors. The selected optimal features are combined with a serial-based technique and the resulting vector is fed to the Ensemble Learning Classifier. The experimental process is evaluated on the basis of two datasets: Private and KVASIR. The accuracy achieved is 99.8 per cent for the private data set and 86.4 percent for the KVASIR data set. It can be confirmed that the proposed method is effective in detecting and classifying GI abnormalities and exceeds other methods of comparison.
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subjects Abnormalities
Bleeding
Classification
Datasets
Deep learning
Feature extraction
Image segmentation
Machine learning
Texture
title Segmentation and Classification of Stomach Abnormalities Using Deep Learning
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