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Corroboration of skin Diseases: Melanoma, Vitiligo Vascular Tumor using Transfer Learning

机译:皮肤病的粗化:Melanoma,白癜风和血管肿瘤使用转移学习

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The precise identification of skin disease is an exigent process even for more experienced doctors and dermatologists because there is a small variation between surrounding skin and lesions, a visual affinity between different skin diseases. Transfer learning is the approach which stores acquired knowledge while solving one problem and apply that knowledge to similar problems. It is a type of machine learning task where a model proposed for a task can be used again. Transfer learning is used in various areas like image processing and gaming simulation. Image processing is an evolving field in the diagnosis of various kinds of skin diseases. Here transfer learning is used to identify three skin diseases such as melanoma, vitiligo, and vascular tumors. The inception V3 model was used as a base model. Networks were pre-trained and then fine-tuned. Considerable growth of training accuracy and testing accuracy were achieved.
机译:即使对于更有经验的医生和皮肤病学家,皮肤病的精确鉴定是一种艰巨的过程,因为周围皮肤和病变之间存在小的变化,不同皮肤病之间的视觉亲和力。转移学习是在解决一个问题的同时存储获得知识的方法,并将该知识应用于类似问题。它是一种机器学习任务,可以再次使用为任务提出的模型。转移学习用于图像处理和游戏模拟等各个领域。图像处理是诊断各种皮肤病的不断发展的领域。这里的转移学习用于鉴定三种皮肤病,如黑素瘤,白癜风和血管肿瘤。 Inception V3模型用作基础模型。网络预先培训,然后进行微调。实现了训练准确性和测试准确性的相当大的增长。

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