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Detection of Skin Diseases using Machine Learning Techniques

Navya Gadina, M. C. Arpitha, B. P. Abhishek, K. C. Santosh

Abstract


Skin diseases are the foremost Wide spread diseases. Despite the fact that being Common, distinguishing proof exists exceptionally extreme also requires concentrated ability inside the area. In this paper, we offer associate approach to discover varied kinds of these diseases. Laptop vision and Machine learning are twin stages that we tend to use for identify diseases accurately. Beginning phase of the picture the sickness of the skin is dependent upon various assortments of preprocessing procedures followed by highlight extraction. At that point the following stage includes it utilizes the Machine learning calculations to spot illnesses dependent on the investigating and recognition of the skin. Some of the skin diseases are Psoriasis, Lichen Planus, Eczema, Pityriasis Rosea and Acne.

Keywords


Skin Diseases, Machine Learning, Psoriasis, Lichen Planus, Pityriasis Rosea.

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References


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