Skin cancer, the most common human malignancy, is primarily diagnosed visually by physicians [1]. Classification with an automated method like CNN [2, 3] shows potential for challenging tasks [1]. By now, the deep convolutional neural networks are on par with human dermatologist [1]. This abstract is dedicated on developing a Deep Learning method for ISIC [5] 2017 Skin Lesion Detection Competition hosted at [6] to classify the dermatology pictures, which is aimed at improving the diagnostic accuracy rate and general level of the human health. The challenge falls into three sub-challenges, including Lesion Segmentation, Lesion Dermoscopic Feature Extraction and Lesion Classification. This project only participates in the Lesion Classification part. This algorithm is comprised of three steps: (1) original images preprocessing, (2) modelling the processed images using CNN [2, 3] in Caffe [4] framework, (3) predicting the test images and calculating the scores that represent the likelihood of corresponding classification. The models are built on the source images are using the Caffe [4] framework. The scores in prediction step are obtained by two different models from the source images.
翻译:皮肤癌是最常见的人类恶性肿瘤,主要由医生进行视觉诊断[1]。使用CNN[2, 3]这样的自动化方法进行分类,显示有挑战性任务[1]。现在,深演神经网络与人体皮肤学家(1)相同。这一摘要致力于为ISIC[5],2017年皮肤皮质检测竞赛开发深入学习方法,该竞赛在[6] 举行,目的是对皮肤科照片进行分类,目的是提高诊断准确率和人类健康的总体水平。挑战归为三个次挑战,包括Lesion分割、Lemosion Demoscocic 地貌提取和Lesion分类。这个项目仅参与Lesion分类部分。这一算法由三个步骤组成:(1)原始图像预处理,(2)利用CNN[2,3]在Caffe [4] 框架中模拟处理过的图像,(3)预测测试图像和计算代表相应分类可能性的分数。模型建在源图像上,正在使用Cafe[4]框架。预测步骤中的分数由两个不同的来源图像模型获得。