A Review on Automatic Diagnosis of Skin Lesion Based on the ABCD

Human Cancer is one of the most dangerous disease which is mainly caused by genetic instability of multiple molecular alterations. Among many forms of human cancer, skin cancer is the most common one. Basically, there are two types of skin cancer named as malignant melanoma and non-melanoma which can be more dangerous if not treated earlier. Therefore, early finding of skin cancer can reduce mortality and morbidity of patients. To identify skin cancer at an early stage we will study and analyze them through various techniques named as segmentation and feature extraction. Both of these images are used to analyze different digital images appropriately. Based on the experiment, a result will be computed.

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