2022
DOI: 10.34088/kojose.1081402
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Classification of Tympanic Membrane Images based on VGG16 Model

Abstract: Otitis Media (OM) is a type of infectious disease caused by viruses and/or bacteria in the middle ear cavity. In the current study, it was aimed to detect the eardrum region in middle ear images and thus to diagnose OM disease by using artificial intelligence methods. The Convolution Neural Networks (CNN) model and the deep features of this model and the images obtained with the otoscope device were used. In order to separate these images as Normal and Anomalous, the end-to-end VGG16 model was directly used in… Show more

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Cited by 8 publications
(3 citation statements)
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“…With the excesses of deep learning in image processing [20,21], many scholars have used convolutional neural networks to obtain satisfactory performances. However, the preliminary work to train this network requires a lot of time and money to collect many images.…”
Section: Discussionmentioning
confidence: 99%
“…With the excesses of deep learning in image processing [20,21], many scholars have used convolutional neural networks to obtain satisfactory performances. However, the preliminary work to train this network requires a lot of time and money to collect many images.…”
Section: Discussionmentioning
confidence: 99%
“…Banyak Penelitian sebelumnya yang menggabungkan arsitektur VGG16-Net dengan Support Vector Machine Salah satunya dalam bidang Kesehatan ditulis oleh Abidin Kaliskan yang berjudul Classification of Tympanic Membrane Image based on VGG16 Model penelitian tersebut mendapatkan akurasi di lapisan f6 sebesar 82,17%. Selain itu, mendapatkan performansi 71,43%, 90,62%, dan 77,92% untuk sensitivity, specificity dan f-score [5]. Selanjutnya ada penelitian sebelumnya yang berjudul Classification of covid-19 X-Ray Images Using A Combination of Deep And Handcrafted Features yang ditulis oleh WeiZhang, Bryan Pogorelsky, Mark Loveland, dan Trevor Wolf penelitian tersebut mendapat akurasi klasifikasi 0.988 dengan menggabungkan VGG16 deep features dengan handcrafted features [6].…”
Section: Pendahuluanunclassified
“…Birbiri ile bağlantılı katmanlar aracılığı ile öznitelikler vektörel hale getirilerek aktivasyon fonksiyonları (sigmoid, softmax ve tanh) yardımı ile tahmin işlemi gerçekleştirilir [30,31]. Literatürde ESA mimarileri kullanılarak, asfalt çatlaklarının tespiti [32], fiziksel hareketlerden aktivite belirleme [33], yazılım güvenlik açıklarının sınıflandırılması [34]; ses, nefes ve öksürükten Covid-19 tespiti [35], alzaymır hastalığının sınıflandırılması [36], beyin tümörü tespiti [37], insan aktivite türlerinin tespiti [38], timpanik membran görüntülerinin sınıflandırılması [39] ve beyin kanaması tespiti [40] gibi birçok alanda başarılı bir şekilde uygulanmıştır.…”
Section: Metotunclassified