Skin cancer is a fatal manifestation of cancer. Unrepaired deoxyribo-nucleic acid (DNA) in skin cells, causes genetic defects in the skin and leads to skin cancer. To deal with lethal mortality rates coupled with skyrocketing costs of medical treatment, early diagnosis is mandatory. To tackle these challenges, researchers have developed a variety of rapid detection tools for skin cancer. Lesion-specific criteria are utilized to distinguish benign skin cancer from malignant melanoma. In this study, a comparative analysis has been performed on five Transfer Learning-based techniques that have the potential to be leveraged for the classification of melanocytic nevi. These techniques are based on deep convolutional neural networks (DCNNs) that have been pre-trained on thousands of open-source images and are used for day-to-day classification tasks in many instances.
翻译:皮肤癌是癌症的致命表现。皮肤细胞中的未修复脱氧核糖核酸(DNA)造成皮肤的遗传缺陷并导致皮肤癌。为了应对致命死亡率和医疗费用飞涨,必须进行早期诊断。为了应对这些挑战,研究人员开发了各种皮肤癌快速检测工具。使用低血压特定标准来区分良性皮肤癌和恶性黑素瘤。在这项研究中,对五种基于学习的转移技术进行了比较分析,这些技术有可能被利用来进行地中海神经的分类。这些技术基于深层次的共生神经网络(DCNN),这些网络已经对数千个开源图像进行了预先培训,并在许多情况下用于日常分类任务。