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An agglomerative segmentation framework for non-convex regions within uterine cervix images

机译:子宫颈图像中非凸区域的聚集分割框架

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The National Cancer Institute has collected a large database of uterine cervix images termed "cervigrams", for cervical cancer screening research. Tissues of interest within the cervigram, in particular the lesions, are of varying sizes and of complexnon-convex shapes. The tissues possess similar color features and their boundaries are not always clear. The main objective of the current work is to provide a segmentation framework for tissues of interest within the cervix, that can cope with these difficulties in an unsupervised manner and with a minimal number of parameters.rnThe proposed framework transitions from pixels to a set of small coherent regions (superpixels), which are grouped bottom-up into larger, non-convex, perceptually similar regions. The merging process is performed utilizing a new graph-cut criterion termed the normalized-mean cut (NMCut) and an agglomerative clustering framework. Superpixels similarity is computed via a locally scaled similarity measure that combines region and edge information. Segmentation quality is evaluated by measuring the overlap accuracy of the generated segments and tissues that were manually marked by medical experts. Experiments are conducted on two sets of cervigrams and lead to the following set of observations and conclusions: 1) The generated superpixels provide an accurate decomposition of the different tissues; 2) The local scaling process improves the clustering results; 3) The influence of different graph-cut criterions on the segmentation accuracy is evaluated and the NMCut criterion is shown to provide the best results; 4) A comparison between several modifications to the agglomerative clustering process is conducted. The results are shown to be strongly influenced by the merging procedure; 5) The agglomerative clustering framework is shown to outperform a state-of-the-art spectral clustering algorithm.
机译:美国国家癌症研究所已经收集了称为“子宫颈图”的子宫子宫颈图像的大型数据库,用于宫颈癌筛查研究。宫颈内的目标组织,特别是病变,大小不一,形状复杂,呈非凸形。这些组织具有相似的颜色特征,它们的边界并不总是清晰的。当前工作的主要目的是为子宫颈内的目标组织提供一个分割框架,该框架可以以无监督的方式和最少的参数来应对这些困难。相干区域(超像素),这些区域自下而上分为较大的,非凸的,在感知上相似的区域。合并过程是使用称为归一化均值割(NMCut)的新图割标准和聚集聚类框架进行的。通过组合区域和边缘信息的局部缩放的相似性度量计算超像素相似性。通过测量由医学专家手动标记的生成段和组织的重叠精度来评估分割质量。对两组子宫颈进行实验,得出以下一组观察结果和结论:1)生成的超像素提供了不同组织的精确分解; 2)局部缩放过程改善了聚类结果; 3)评估了不同的图形切割准则对分割精度的影响,并显示了NMCut准则可提供最佳结果; 4)进行了对聚类聚类过程的几种修改之间的比较。结果表明,合并过程对结果有很大的影响。 5)聚类聚类框架显示出优于最新的光谱聚类算法。

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