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Publication:
An Effective Medical Image Classification: Transfer Learning Enhanced by Auto Encoder and Classified with SVM

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Abstract

The count of white blood cells is vital for disease diagnosis, which is exploited to identify many diseases like infections and leukemia. COVID-19 is another critical disease which should be detected and cured immediately. These diseases are better diagnosed using radiological and microscopic imaging. A clinical experience is required by a physician, to identify and classify the Chest X-rays or the microscopic blood cell images. In this study a novel approach is proposed for classifying medical images by using transfer learning method which is ResNet-50 where features are reduced with Auto Encoder (AE) and classified with a Support Vector Machine (SVM) instead of softmax classifier which is tested with different optimizers. The proposed method is compared with VGG-16 and ResNet-50, Inception-V3 which use softmax classifiers. Experimental results indicated that the proposed method possess 97.3% and 99% accuracy on WBC and COVID-19 datasets respectively which are higher than compared methods for each dataset.

Description

Sevinc, Omer/0000-0003-0006-1682

Citation

WoS Q

Q4

Scopus Q

Source

Traitement Du Signal

Volume

39

Issue

1

Start Page

125

End Page

131

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