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Spectral Aggregation Based on Iterative Graph Cut for Sonographic Breast Image Segmentation

机译:基于迭代图割的谱聚集用于超声乳腺图像分割

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In this paper, an image segmentation framework is proposed by unifying the techniques of spectral clustering and graph-cutting to address the difficult problem of breast lesion demarcation in sonography. In order to alleviate the effect of speckle noise and posterior acoustic shadows, the ROI of a sono-gram is mapped to a specific eigen-space as an eigenmap by a constrained spectral clustering scheme. The eigen-mapping is boosted with the incorporation of partial grouping setting and then provide a useful preliminary aggregation based on intensity affinity. Following that, an iterative graph cut framework is carried out to identify the object of interest in the projected eigenmap. The proposed segmentation algorithm is evaluated with four sets of manual delineations on 110 breast ultrasound images. The experiment results corroborates that the boundaries derived by the proposed algorithm are comparable to manual delineations and hence can potentially provide reliable morphological information of a breast lesion.
机译:本文通过统一频谱聚类和图割技术,提出了一种图像分割框架,以解决超声图像中乳腺病变标定的难题。为了减轻散斑噪声和后声影的影响,通过约束谱聚类方案将声谱图的ROI作为特征图映射到特定的特征空间。通过合并部分分组设置可增强特征映射,然后基于强度亲和力提供有用的初步聚集。之后,执行迭代图切割框架以识别投影特征图中的感兴趣对象。拟议的分割算法是在110张乳腺超声图像上使用四组手动轮廓进行评估的。实验结果证实了所提出的算法得出的边界与人工勾画相当,因此有可能提供可靠的乳腺病变形态信息。

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