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首页> 外文期刊>Biomedical Engineering, IEEE Transactions on >Accurate Segmentation of Cervical Cytoplasm and Nuclei Based on Multiscale Convolutional Network and Graph Partitioning
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Accurate Segmentation of Cervical Cytoplasm and Nuclei Based on Multiscale Convolutional Network and Graph Partitioning

机译:基于多尺度卷积网络和图划分的宫颈细胞质和细胞核精确分割

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摘要

In this paper, a multiscale convolutional network (MSCN) and graph-partitioning-based method is proposed for accurate segmentation of cervical cytoplasm and nuclei. Specifically, deep learning via the MSCN is explored to extract scale invariant features, and then, segment regions centered at each pixel. The coarse segmentation is refined by an automated graph partitioning method based on the pretrained feature. The texture, shape, and contextual information of the target objects are learned to localize the appearance of distinctive boundary, which is also explored to generate markers to split the touching nuclei. For further refinement of the segmentation, a coarse-to-fine nucleus segmentation framework is developed. The computational complexity of the segmentation is reduced by using superpixel instead of raw pixels. Extensive experimental results demonstrate that the proposed cervical nucleus cell segmentation delivers promising results and outperforms existing methods.
机译:本文提出了一种基于多尺度卷积网络(MSCN)和基于图划分的方法,用于宫颈细胞质和细胞核的精确分割。具体而言,探索了通过MSCN进行的深度学习以提取尺度不变特征,然后以每个像素为中心分割区域。通过基于预训练特征的自动图形划分方法,可以对粗略分割进行细化。学习目标对象的纹理,形状和上下文信息以定位独特边界的外观,还可以对其进行探索以生成标记以分裂触摸核。为了进一步细化分割,开发了从粗到细的核分割框架。通过使用超像素而不是原始像素,可以降低分割的计算复杂度。大量的实验结果表明,提出的宫颈核细胞分割方法可提供有希望的结果,并且优于现有方法。

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