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Automatic skin lesion segmentation by coupling deep fully convolutional networks and shallow network with textons

机译:通过将深层全卷积网络和浅层网络与texton耦合来自动进行皮肤病变分割

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摘要

Segmentation of skin lesions is an important step in computer-aided diagnosis of melanoma; it is also a very challenging task due to fuzzy lesion boundaries and heterogeneous lesion textures. We present a fully automatic method for skin lesion segmentation based on deep fully convolutional networks (FCNs). We investigate a shallow encoding network to model clinically valuable prior knowledge, in which spatial filters simulating simple cell receptive fields function in the primary visual cortex (V1) is considered. An effective fusing strategy using skip connections and convolution operators is then leveraged to couple prior knowledge encoded via shallow network with hierarchical data-driven features learned from the FCNs for detailed segmentation of the skin lesions. To our best knowledge, this is the first time the domain-specific hand craft features have been built into a deep network trained in an end-to-end manner for skin lesion segmentation. The method has been evaluated on both ISBI 2016 and ISBI 2017 skin lesion challenge datasets. We provide comparative evidence to demonstrate that our newly designed network can gain accuracy for lesion segmentation by coupling the prior knowledge encoded by the shallow network with the deep FCNs. Our method is robust without the need for data augmentation or comprehensive parameter tuning, and the experimental results show great promise of the method with effective model generalization compared to other state-of-the-art-methods.
机译:皮肤病变的分割是计算机辅助黑色素瘤诊断的重要步骤。由于病灶边界模糊和病灶纹理不均,这也是一项非常具有挑战性的任务。我们提出了一种基于深度完全卷积网络(FCN)的皮肤病变分割的全自动方法。我们研究了一种浅层编码网络,以对具有临床价值的先验知识进行建模,其中考虑了模拟主要视皮层(V1)中简单细胞接受域功能的空间滤波器。然后,利用有效的融合策略(使用跳过连接和卷积运算符)将通过浅层网络编码的先验知识与从FCN获悉的分层数据驱动特征相结合,以对皮肤病变进行详细分割。据我们所知,这是首次将针对特定领域的手工艺品功能构建到以端到端的方式进行训练的深度网络中,以进行皮肤病变分割。该方法已在ISBI 2016和ISBI 2017皮肤病变挑战数据集中进行了评估。我们提供了比较证据,以证明我们新设计的网络可以通过将浅层网络编码的先验知识与深层FCN耦合来获得病变分割的准确性。我们的方法是健壮的,不需要数据扩充或全面的参数调整,并且实验结果表明,与其他最新方法相比,该方法具有有效的模型概括性。

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