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首页> 外文期刊>IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control >Unsupervised segmentation of RF echo into regions with different scattering characteristics
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Unsupervised segmentation of RF echo into regions with different scattering characteristics

机译:将RF回波无监督地分割为具有不同散射特性的区域

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Recent experimental results verify that the probability distribution function of the diffuse component of the RF echo depends primarily on the concentration of the diffuse scatterers in the resolution cell. In this paper we apply these results to develop an unsupervised segmentation scheme that partitions an RF A-scan or B-scan image into statistically homogeneous regions that reflect the underlying scattering characteristics. The proposed segmentation scheme is based on a nonparametric homogeneity test that compares two regions of interest (ROI) for possible merging utilizing information about both the coherent and the diffuse component of the RF echo. For the coherent component, homogeneity is defined in terms of the estimated average spacing of each ROI. For the diffuse component, we use the nonparametric Kolmogorov-Smirnov (K-S) homogeneity statistical test that compares two empirical distributions associated with any two ROIs. This test can be used to obtain a segmentation into regions with different scattering characteristics regardless of the nature of the scattering conditions (e.g., Rayleigh regions with different scatterer concentration, different non-Rayleigh regions, or different coherent scattering regions). Finer segmentation can be obtained by learning the distributions associated with the various homogeneous regions obtained from the coarse segmenter. The proposed segmentation scheme is applied on simulated RF scans with different scatterer concentration per resolution cell, on phantom data which mimic tissue, and on liver scans. The results demonstrate the effectiveness of the segmentation algorithm even in cases of subtle differences in the scattering characteristics of each region (for example, diffuse component with scatterer density of 16 and 32 scatterers per resolution cell).
机译:最近的实验结果证明,RF回波的散射分量的概率分布函数主要取决于分辨单元中散射散射体的浓度。在本文中,我们将这些结果应用于开发无监督的分割方案,该方案将RF A扫描或B扫描图像划分为反映基本散射特征的统计均匀区域。提出的分割方案基于非参数均一性测试,该测试比较了两个感兴趣区域(ROI),以便利用有关RF回波的相干分量和扩散分量的信息进行可能的合并。对于相干分量,均质性是根据每个ROI的估计平均间距定义的。对于扩散分量,我们使用非参数Kolmogorov-Smirnov(K-S)同质性统计检验,该检验比较与任意两个ROI相关的两个经验分布。不管散射条件的性质如何,该测试均可用于将其分割为具有不同散射特性的区域(例如,具有不同散射体浓度的Rayleigh区域,不同的非Rayleigh区域或不同的相干散射区域)。通过学习与从粗分割器获得的各种均匀区域相关的分布,可以获得更精细的分割。拟议的分割方案适用于每个分辨率池具有不同散射体浓度的模拟RF扫描,模拟组织的幻像数据以及肝脏扫描。结果证明,即使在每个区域的散射特性存在细微差异的情况下(例如,每个分辨率像元的散射密度为16和32个散射体的漫反射分量),分割算法也有效。

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