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Interacting Convolution with Pyramid Structure Network for Automated Segmentation of Cervical Nuclei in Pap Smear Images

机译:金字塔结构网络与相互作用的卷积在宫颈涂片图像中自动分割宫颈核

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Pap smear method which is based on the morphological properties of cell nuclei is used to detect pre-cancerous cells in the uterine cervix. An automated and accurate segmentation of nuclei is essential in detection. In this paper, we propose an Interacting Convolution with Pyramid Structure Network (ICPN), which consists of a sufficient aggregating path that focus on more nucleus contexts and a selecting path that enable nucleus localization. The two paths are built on Interacting Convolutional Modules (ICM) and Internal Pyramid Resolution Complementing Modules (IPRCM) respectively. ICM reciprocally aggregates different details of contexts from two sizes of kernels for capturing distinguishing features of diverse sizes and shapes of nuclei. Meanwhile, IPRCM hierachically complements kinds of resolution features to prevent information loss in encoding precedure. The proposed method shows a Zijdenbos similarity index (ZSI) of 0.972±0.04 on Herlev dataset compared to the state-of-the-art approach.
机译:基于细胞核形态学特征的子宫颈抹片检查法可用于检测子宫颈癌前细胞。在检测中,自动准确地分割核至关重要。在本文中,我们提出了一种与金字塔结构网络相互作用的卷积(ICPN),它由一个集中于更多核上下文的足够聚合路径和一个使核定位成为可能的选择路径组成。两条路径分别建立在交互卷积模块(ICM)和内部金字塔分辨率补充模块(IPRCM)上。 ICM相互聚集来自两种大小的内核的上下文的不同细节,以捕获不同大小和形状的核的不同特征。同时,IPRCM在层次上补充了各种分辨率功能,以防止编码过程中的信息丢失。与最新方法相比,该方法在Herlev数据集上显示的Zijdenbos相似性指数(ZSI)为0.972±0.04。

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