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Universitas Hasanuddin
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Disease Classification based on Dermoscopic Skin Images Using Convolutional Neural Network in Teledermatology System

Purnama I.K.E.

2019 International Conference on Computer Engineering Network and Intelligent Multimedia Cenim 2019 Proceeding

Published: 2019Citations: 23

Abstract

We have proposed a system of classification and detection of skin diseases that can be applied to Teledermatology. This system will classify skin diseases on dermoscopic images using the Deep Learning algorithm, Convolutional Neural Network (CNN). Dermoscopic image data in this study from MNIST HAM10000 dataset which amounts to 10,015 images and published by International Skin Image Collaboration (ISIC). The dataset is divided into seven class of skin diseases which fall into the category of skin cancer. The image classification process will use two pre-trained CNN models, MobileNet v1 and Inception V3. The model results from the learning process will be applied to a web-classifier. The comparison of predictive accuracy shows that the web-classifier using the CNN Inception V3 model has an accuracy value of 72% while the web-classifier that uses the MobileNet v1 model has an accuracy value of 58%.

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Convolutional neural networkSciences
Artificial intelligenceSciences
Computer scienceSciences
TeledermatologySciences
Classifier (UML)Sciences
Pattern recognition (psychology)Sciences
MNIST databaseSciences
Deep learningSciences
Contextual image classificationSciences
Machine learningSciences
Image (mathematics)Sciences
TelemedicineSciences
EconomicsSciences
Economic growthSciences
Health careSciences