Skin lesion segmentation is an important step for automatic melanoma diagnosis. Due to the non-negligible diversity of lesions from different patients, extracting powerful context for fine-grained semantic segmentation is still challenging today. Although the deep convolutional neural network (CNNs) have made significant improvements on skin lesion segmentation, they often fail to reserve the spatial details and long-range dependencies context due to consecutive convolution striding and pooling operations inside CNNs. In this paper, we formulate a cascaded context enhancement neural network for automatic skin lesion segmentation. A new cascaded context aggregation (CCA) module with a gate-based information integration approach is proposed to sequentially and selectively aggregate original image and multi-level features from the encoder sub-network. The generated context is further utilized to guide discriminative features extraction by the designed context-guided local affinity (CGL) module. Furthermore, an auxiliary loss is added to the CCA module for refining the prediction. In our work, we evaluate our approach on four public skin dermoscopy image datasets. The proposed method achieves the Jaccard Index (JA) of 87.1%, 80.3%, 83.4%, and 86.6% on ISIC-2016, ISIC-2017, ISIC-2018, and PH2 datasets, which are higher than other state-of-the-art models respectively.
翻译:由于不同病人的病变不可忽略,因此目前仍难以为继。尽管深相神经神经网络(CNNs)在皮肤损伤分化方面取得了显著的改善,但由于CNN连续的变异拼凑和集中操作,它们往往无法保留空间细节和长距离依赖环境。在本文中,我们为自动皮肤分化设计了一个连锁增强神经网络。一个新的基于门的高级环境组合(CCA)模块,采用基于门的信息集成法,以相继和有选择性的原始综合图像和来自编码器子网络的多层次特征。生成的环境还被进一步用于指导设计的背景引导地方亲近性模块的歧视性特征提取。此外,在改进预测的CCA模块中增加了一个辅助损失。在我们的工作中,我们评估了四个公共皮肤分解镜化图像集的四种方法,即基于门的更高环境组合组合(CCA)模块,有顺序和选择性的原始图像集成和来自编码系统(ISIC)的多层次图像集成(IPI)186、86.I.I.I.I.3.和I.I.I.I.C.I.I.I.I.I.I.I.I.I.I.I.I.I.I.I.