Skin Disease Detection Based On Deep Learning

Main Article Content

C.Nallusamy
Suriya M
Vidhyaa Sagar G
Pavithran T

Keywords

CNN, Plant Disease, Deep Learning

Abstract

People may now more easily access reliable information thanks to the growth of mobile applications. Customers, particularly those with medical concerns, are hoping for a reaction from the virtual world. This framework, which is based on the picture, explains the many applications of skin infection identification. A dataset of photos with unattractive skin is needed by the framework. This framework was created to separate skin infections from unattractive photos. We will analyse the picture preprocessing using the difference in edge esteem. The decision-making process will increase the differentiation in edge value versus thought unwanted skin that has been detected. Android Studio and the OpenCV library were used to create the CNN (Convolutional Neural Network). It has been successful in developing portable applications for Android that can identify photographs of skin conditions. Yet, the discovery gives a general notion of the condition.

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