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Deep Neural Network for Melanoma Classification in Dermoscopic Images

机译:大皮肤瘤中的深层神经网络在Dermoscopic图像中的分类

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Melanoma classification in dermoscopic images is a very challenging task on account of the low contrast of skin lesions, the various forms of melanomas, the high degree of visual similarity between melanoma and non-melanoma lesions and artifacts of dermoscopic images such as dark lighting. In this paper, we investigate pathological course of outlier lesions developing to be melanoma and try to meet the above challenges by proposing a novel neural network based on Efficient-B5. Compared with existing approaches, our deeper, wider and higher resolution network can capture far more complex and more fine-grained feature representations for melanoma classification. In order to evaluate model performance, we conduct a variety of experiments. The experimental results on a large publicly available dataset ISIC 2020 Challenge Dataset, which is generated by the International Skin Imaging Collaboration and images of it are from several primary medical sources, have demonstrated the significant performance gains of our proposed network compared with prior popular melanoma classifiers, ranking the first in melanoma classification.
机译:黑色素瘤在皮肤病图像中的分类是一种非常具有挑战性的任务,而不是皮肤病变,各种形式的黑色素瘤,黑素瘤与非黑色素瘤之间的高度视觉相似性和皮肤镜像等暗照明的伪影。在本文中,我们调查了发展成为黑色素瘤的异常值病变的病理过程,并试图通过基于高效-B5提出一种新的神经网络来满足上述挑战。与现有方法相比,我们更深入,更广泛,更高的分辨率网络可以捕获对黑色素瘤分类的更复杂和更细粒度的特征表示。为了评估模型性能,我们进行各种实验。在大型公共可公共数据集ISIC 2020挑战数据集上的实验结果由国际皮肤成像协作和图像产生的几个主要医疗来源,并与先前流行的黑色素瘤分类器相比,我们所提出的网络的显着性能提升,排名第一个在黑色素瘤分类中。

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