Mobile-based skin lesions classification using convolution neural network

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Abstract

Received: 25th January 2020; Accepted: 7th March 2020; Published: 1st April 2020 Abstract: This research work is aimed at investing skin lesions classification problem using Convolution Neural Network (CNN) using cloud-server architecture. Using the cloud services and CNN, a real-time mobile-enabled skin lesions classification expert system “i-Rash” is proposed and developed. i-Rash aimed at early diagnosis of acne, eczema and psoriasis at remote locations. The classification model used in the “i-Rash” is developed using the CNN model “SqueezeNet”. The transfer learning approach is used for training the classification model and model is trained and tested on 1856 images. The benefit of using SqueezeNet results in a limited size of the trained model i.e. only 3 MB. For classifying new image, cloud-based architecture is used, and the trained model is deployed on a server. A new image is classified in fractions of seconds with overall accuracy, sensitivity and specificity of 97.21%, 94.42% and 98.14% respectively. i-Rash can serve in initial classification of skin lesions, hence, can play a very important role early classification of skin lesions for people living in remote areas.

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APA

Hameed, N., Shabut, A., Hameed, F., Cirstea, S., Harriet, S., & Hossain, A. (2020). Mobile-based skin lesions classification using convolution neural network. Annals of Emerging Technologies in Computing, 4(2), 26–37. https://doi.org/10.33166/AETiC.2020.02.003

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