Classification of Melanocytic Nevus Images using BigTransfer (BiT) : A study on a novel transfer learning-based method to classify Melanocytic Nevus Images

Sanya Sinha, Nilay Gupta
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Abstract

Skin cancer is a fatal disease that takes a heavy toll over human lives annually. The colored skin images show a significant degree of resemblance between different skin lesions such as melanoma and nevus, making identification and diagnosis more challenging. Melanocytic nevi may mature to cause fatal melanoma. Therefore, the current management protocol involves the removal of those nevi that appear intimidating. However, this necessitates resilient classification paradigms for classifying benign and malignant melanocytic nevi. Early diagnosis necessitates a dependable automated system for melanocytic nevi classification to render diagnosis efficient, timely, and successful. An automated classification algorithm is proposed in the given research. A neural network previously-trained on a separate problem statement is leveraged in this technique for classifying melanocytic nevus images. The suggested method uses BigTransfer (BiT), a ResNet-based transfer learning approach for classifying melanocytic nevi as malignant or benign. The results obtained are compared to that of current techniques, and the new method’s classification rate is proven to outperform that of existing methods.
基于BigTransfer (BiT)的黑素细胞痣图像分类:一种基于迁移学习的黑素细胞痣图像分类新方法的研究
皮肤癌是一种致命的疾病,每年都会夺去很多人的生命。彩色皮肤图像显示不同皮肤病变(如黑色素瘤和痣)之间有很大程度的相似性,使识别和诊断更具挑战性。黑素细胞痣成熟后可能导致致命的黑色素瘤。因此,当前的管理协议包括去除那些看起来令人生畏的痣。然而,这需要弹性分类范式分类良性和恶性黑素细胞痣。早期诊断需要一个可靠的黑素细胞痣分类自动化系统,以使诊断有效、及时和成功。本文提出了一种自动分类算法。该技术利用先前在单独问题陈述上训练的神经网络对黑素细胞痣图像进行分类。建议的方法使用BigTransfer (BiT),这是一种基于resnet的迁移学习方法,用于将黑素细胞痣分类为恶性或良性。将所得结果与现有方法进行了比较,证明新方法的分类率优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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