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A MULTI-STAGE FRAMEWORK WITH CONTEXT INFORMATION FUSION STRUCTURE FOR SKIN LESION SEGMENTATION

机译:一种多级框架,具有用于皮肤病变分割的上下文信息融合结构

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The computer-aided diagnosis (CAD) systems can highly improve the reliability and efficiency of melanoma recognition. As a crucial step of CAD, skin lesion segmentation has the unsatisfactory accuracy in existing methods due to large variability in lesion appearance and artifacts. In this work, we propose a framework employing multi-stage UNets (MS-UNet) in the auto-context scheme to segment skin lesion accurately end-to-end. We apply two approaches to boost the performance of MS-UNet. First, UNet is coupled with a context information fusion structure (CIFS) to integrate the low-level and context information in the multi-scale feature space. Second, to alleviate the gradient vanishing problem we use deep supervision mechanism through supervising MS-UNet by minimizing a weighted Jaccard distance loss function. Three out of five commonly used performance metrics, including Jaccard index and Dice coefficient, show that our approach outperforms the state-of-the-art deep learning based methods on the ISBI 2016 Skin Lesion Challenge dataset.
机译:计算机辅助诊断(CAD)系统可以高度提高黑素瘤识别的可靠性和效率。作为CAD的关键步骤,由于病变外观和文物的巨大可变性,皮肤病变分割具有现有方法的令人满意的准确性。在这项工作中,我们提出了一种在自动上下文方案中采用多级缺盘(MS-UNET)的框架,以准确结束皮肤病变。我们采用两种方法来提高MS-UNET的性能。首先,UNET与上下文信息融合结构(CIFS)耦合,以将低级和上下文信息集成在多尺度特征空间中。其次,为了减轻梯度消失问题,我们通过最小化加权Jaccard距离损失功能来监测MS-UNET来使用深度监督机制。五种常用的性能指标中的三个,包括Jaccard索引和骰子系数,表明我们的方法优于ISBI 2016皮肤病尼挑战数据集的最先进的基于深度学习的方法。

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