使用神经网络和迁移学习预测皮肤癌的比较分析

Soumitra Das, Durgaprasad Gangodkar, R. Singh, P. Vijay, Ankit Bhardwaj, Amit Semwal
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引用次数: 0

摘要

皮肤是身体的最外层,隐藏着许多身体器官、肌肉和其他无数的身体部位。研究发现,人体暴露在紫外线下是皮肤癌(UV)的主要原因。表面有很多层,但顶部和真皮层是癌症首先出现的地方。肤色的变化或身体许多部位出现瑕疵是最常见的警告信号。预防癌症的唯一方法就是尽可能远离紫外线,这样可以防止他们的皮肤接触到疾病。据统计,这种癌症的病例不仅在增加,而且还在迅速增加,这是由于臭氧层的恶化,这使得它停止释放危险的能量,因此,与我们的皮肤接触。对于下面的问题,使用了几种不同的策略,包括机器学习、深度学习和数据增强。贝叶斯分类器、线性回归、随机林地、退休人员、人工神经网络和深度神经网络只是使用的许多技术中的一小部分。该研究努力将迁移学习和深度学习方法结合起来,以提供一个结果,显示哪种方法在下一个挑战中表现最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Analysis of Skin Cancer Prediction using Neural Networks and Transfer Learning
The skin is the body’s outermost layer, concealing/covering many physical organs, muscles, and other innumerable bodily parts. The research found that the body’s exposure to ultraviolet light is the main contributor to skin cancer (UV). There are many layers to the surface, but the top and dermis are where cancer first appears. Variations in you complexion or the appearance of a blemish in many locations on your body are the most common warning signs. The only way to prevent cancer is to stay as far away from Uvr as you can, that could stop their skin from coming into contact with the disease. According to statistics, cases of this cancer are not only increased but are increasing swiftly as a result of the ozone layer’s deterioration, which causes it to stop emitting dangerous energy and, as a result, come into contact with our skin. For the following problem, several different strategies including machine learning, deep learning, and data augmentation are being used. Bayes Classifier, linear regression, random woodland, retiree, artificial neural network, and dnn are just a few of the many techniques used. The research makes an effort to put both transfer learning and deep learning approaches to use in order to provide a result that shows which performed best for the next challenge.
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