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A Deep Learning Based Approach to Skin Lesion Border Extraction With a Novel Edge Detector in Dermoscopy Images

机译:基于深度学习的皮肤镜图像中新型边缘检测器的皮肤病变边界提取方法

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Lesion border detection is considered a crucial step in diagnosing skin cancer. However, performing such a task automatically is challenging due to the low contrast between the surrounding skin and lesion, ambiguous lesion borders, and the presence of artifacts such as hair. In this paper we propose a two-stage approach for skin lesion border detection: (i) segmenting the skin lesion dermoscopy image using U-Net, and (ii) extracting the edges from the segmented image using a novel approach we call FuzzEdge. The proposed approach is compared with another published skin lesion border detection approach, and the results show that our approach performs better in detecting the main borders of the lesion and is more robust to artifacts that might be present in the image. The approach is also compared with the manual border drawings of a dermatologist, resulting in an average Dice similarity of 87.7%.
机译:病变边界检测被认为是诊断皮肤癌的关键步骤。然而,由于周围的皮肤和病变,模糊的病变边界之间的对比度低,以及诸如头发的伪像之间的对比度,自动执行这种任务是具有挑战性的。在本文中,我们提出了一种用于皮肤病变边界检测的两阶段方法:(i)使用U-NET分割皮肤病变Dermoscopy图像,(ii)使用我们称之为FuzzEge的新方法从分段图像中提取边缘。将所提出的方法与另一种公开的皮肤病变边界检测方法进行比较,结果表明,我们的方法在检测病变的主边界方面表现更好,并且对图像中可能存在的伪像更加坚固。该方法也与皮肤科医生的手动边界图进行了比较,导致平均骰子相似度为87.7%。

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