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Deep Learning Architiectures For Aided Melanoma Skin Disease Recognition: A Review

机译:辅助黑素瘤皮肤病认可的深度学习architures:综述

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Melanoma, a sort of skin disease, in spite of the fact that it represents a little percentage of skin malignancies in the USA, it represents higher than seventy five percent of all skin diseases connected to all fatalities in the USA alone. This motivated researcher to seek automated techniques that facilitates early diagnosis of skin cancer. Skin lesion segmentation using machine learning became one of the best ways used for early detection and treatment of skin cancer. Recently, the researchers used a different deep network architectures, to segment and diagnose skin cancer. In this paper, we introduce a review of existing deep network architectures that have been suggested to segment skin lesions, pre-processing and post-processing methods with the available datasets that can be used for research in this area, also presented a comparison between the results of different methods used for skin lesion segmentation showing the strengths and weaknesses of each method.
机译:黑色素瘤是一种皮肤病,尽管它代表了美国的少量皮肤恶性肿瘤,其占所有皮肤病的百分之七十五,而不是仅仅是美国的所有死亡。 这种激励的研究人员寻求有助于早期诊断皮肤癌的自动化技术。 使用机器学习的皮肤病变分割成为早期检测和治疗皮肤癌的最佳方法之一。 最近,研究人员使用了不同的深网络架构,分段和诊断皮肤癌。 在本文中,我们介绍了对现有的深网络架构进行了审查,这些架构已经建议对皮肤病变,预处理和后处理方法具有可用于该领域的研究的可用数据集,还提出了与研究的研究 用于皮肤病变分割的不同方法的结果显示每种方法的强度和弱点。

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