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Supervised Versus Unsupervised Deep Learning Based Methods for Skin Lesion Segmentation in Dermoscopy Images

机译:基于监督与无监督深度学习的皮肤镜图像中皮肤病变分割方法

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Image segmentation is considered a crucial step in automatic dermoscopic image analysis as it affects the accuracy of subsequent steps. The huge progress in deep learning has recently revolutionized the image recognition and computer vision domains. In this paper, we compare a supervised deep learning based approach with an unsupervised deep learning based approach for the task of skin lesion segmentation in dermoscopy images. Results show that, by using the default parameter settings and network configurations proposed in the original approaches, although the unsupervised approach could detect fine structures of skin lesions in some occasions, the supervised approach shows much higher accuracy in terms of Dice coefficient and Jaccard index compared to the unsupervised approach, resulting in 77.7% vs. 40% and 67.2% vs. 30.4%, respectively. With a proposed modification to the unsupervised approach, the Dice and Jaccard values improved to 54.3% and 44%, respectively.
机译:图像分割被认为是自动皮肤镜图像分析中的关键步骤,因为它会影响后续步骤的准确性。深度学习的巨大进步最近已彻底改变了图像识别和计算机视觉领域。在本文中,我们将基于监督的基于深度学习的方法与基于非监督的基于深度学习的方法进行了皮肤镜图像中皮肤病变分割的任务的比较。结果表明,通过使用原始方法中建议的默认参数设置和网络配置,尽管无监督方法在某些情况下可以检测到皮肤病变的精细结构,但与Dice系数和Jaccard指数相比,有监督方法显示出更高的准确性无监督方法的结果分别为77.7%,40%和67.2%,30.4%。通过对无监督方法的建议修改,Dice和Jaccard值分别提高到54.3%和44%。

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