Artificial Intelligence for Curing Skin Disorders

International Journal of Computer Science and Engineering
© 2018 by SSRG - IJCSE Journal
Volume 5 Issue 10
Year of Publication : 2018
Authors : Vedant Bhatt, Mohammad Makki

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How to Cite?

Vedant Bhatt, Mohammad Makki, "Artificial Intelligence for Curing Skin Disorders," SSRG International Journal of Computer Science and Engineering , vol. 5,  no. 10, pp. 7-9, 2018. Crossref, https://doi.org/10.14445/23488387/IJCSE-V5I10P103

Abstract:

 Skin disorder is something that everyone goes through in their life time. Skin disorder can lead to major problems and disease both physically and psychology. A person having skin diseases have to go through both physical and mental pain, as when the person goes out he is discriminated in the society. And the skin specialist cost a lot to just tell you which disease he is going through and what medicine he should take. In this paper we will discuss about an AI model which we will train using image classification algorithm to detect skin disorders and tell the user which medicines he should take. By implementing and using this model we can provide a global solution for skin disorders treatment.

Keywords:

 

image classification algorithm, skin disorder, skin specialist, model.

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