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Skin Cancer Detection and Classification System by Applying Image Processing and Machine Learning Techniques

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Abstract

In these modern days, cancers like Skin cancers is the general type of cancer that alters the life style of millions of citizens in each time. Around three million people are identified with it in each and every year in the US alone. Skin cancer related to the irregular enlargement of cells. On account of malignancy characteristic skin type cancer is termed as melanoma. Melanoma seems on skins because of the contact to ultraviolet emission and hereditary reasons. Thus melanoma seems like brown and black colour, but also occurs anyplace of the patient. Mostly the skin type cancers could be treatable at the earliest phases of beginning. So a fast recognition of skin cancer could rescue the life of patient. However, identifying skin cancer in its starting phases may be difficult and moreover it is expensive. Thus in the paper, they try to cope with such types of problems by making a wise decision scheme for skin lesion identification like the starting phase, that should be set into a smart robot for physical condition monitoring in our present surroundings to support early on detection. The scheme is enhanced to classify benign and malignant skin lesions with different procedures, comprising of pre-processing for instance noise elimination, segmentation, and feature extraction from lesion sections, feature collection and labelling. Following the separation of lots of raw images, colour and texture characteristics from the lesion regions, is employed to categorize the largely prejudiced noteworthy subsets for fit and cancerous circumstances. In it SVM has been applied to carry out benign and malignant lesion detection.

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Correspondence to Dr. A. Rasmi or Dr. A. Jayanthiladevi.

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Dr. A. Rasmi, Dr. A. Jayanthiladevi Skin Cancer Detection and Classification System by Applying Image Processing and Machine Learning Techniques. Opt. Mem. Neural Networks 32, 197–203 (2023). https://doi.org/10.3103/S1060992X23030086

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  • DOI: https://doi.org/10.3103/S1060992X23030086

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