基于通用图像特征学习的黑色素瘤自动诊断框架

Wei Sun, Hui Xu, Xiaorui Zhang, Aiguo Song
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引用次数: 0

摘要

基于图像处理的黑色素瘤自动诊断能够给出更客观的结果。为了方便患者在家检查,我们提出了一种基于常见图像的黑色素瘤自动诊断框架。首先,利用基于变分框架的VFR (Retinex)照度评估方法,对因拍摄摄像机视点和环境光照变化而存在照度问题的图像进行过滤;其次,采用基于色差的GrabCut算法对病变区域进行分割;它能自动、高效地完成分割。第三,利用卷积神经网络(CNN)提取高级特征,选择支持向量机(SVM)分类器完成黑色素瘤分类。与手工特征相比,CNN可以获取图像的深度信息。由于缺乏医学图像,SVM分类器优于其他分类器。最后,我们从不同的角度验证了我们的方法,准确度比其他方法提高了约5%。
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Automatic melanoma diagnosis framework based on common image feature learning
Automatic melanoma diagnosis based on image processing can give more objective results. To facilitate examination for patients at home, we propose a new automatic melanoma diagnosis framework based on common images. Firstly, we use illumination assessment based on variational framework for Retinex (VFR) to filter the images with illumination problem caused by variation of capturing cameras viewpoint and ambient light. Secondly, the GrabCut algorithm based on colour difference is used to segment lesion area. It can complete segmentation automatically and efficiently. Thirdly, we use convolutional neural network (CNN) to extract high-level features and choose support vector machine (SVM) classifier to complete melanoma classification. Compared to hand-craft features, CNN can acquire deep information of images. Because of the lack of medical images, the SVM classifier is better than other classifiers. Finally, we validated our approach from different perspectives and the accuracy is increased by about 5% over other methods.
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