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使用无监督聚类技术检测超声图像中的斑点

Speckle detection in ultrasonic images using unsupervised clustering techniques.

作者信息

Azar Arezou Akbarian, Rivaz Hasan, Boctor Emad

机构信息

The Russell H. Morgan Department of Radiology and Radiological Science, Johns Hopkins University, 3400 North Charles Street, Baltimore, MD 21218, USA.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2011;2011:8098-101. doi: 10.1109/IEMBS.2011.6091997.

Abstract

In ultrasonic images, identification of speckled regions helps to estimate probe movement as well as improve performance of algorithms for adaptive speckle suppression and the elevational separation of B-scans by speckle decorrelation. By tracking FDS patch displacements over time we can calculate strain and detect tumor location. Previous studies for speckle detection were based on classification techniques which estimated parameters of the statistical distribution which were based on observation data and ultrasound echo envelope signal. However, in this study, we proposed a new combination of statistical features which were extracted from the ultrasound images and explored their properties for the speckle detection. These features were used as inputs to the unsupervised clustering algorithms for the speckle classification. We used five different types of unsupervised techniques and compared their performance by feeding different combinations of the statistical features. In order to quantitatively compare statistical features and classification methods, as ground truth, we used simulations of cyst and fetus ultrasound images which were generated using Field II ultrasound simulation program[1]. Initial results showed that by combining two statistical models (K and Rayleigh distributions) we can get best speck detection signatures to feed unsupervised classifiers and maximize speckle detection performance.

摘要

在超声图像中,识别斑点区域有助于估计探头移动,还能提高自适应斑点抑制算法以及通过斑点去相关实现B扫描仰角分离算法的性能。通过跟踪随时间变化的FDS斑块位移,我们可以计算应变并检测肿瘤位置。先前关于斑点检测的研究基于分类技术,这些技术估计基于观测数据和超声回波包络信号的统计分布参数。然而,在本研究中,我们提出了一种从超声图像中提取的统计特征的新组合,并探索了它们在斑点检测中的特性。这些特征被用作无监督聚类算法进行斑点分类的输入。我们使用了五种不同类型的无监督技术,并通过输入不同组合的统计特征来比较它们的性能。为了定量比较统计特征和分类方法,作为基准真值,我们使用了使用Field II超声模拟程序[1]生成的囊肿和胎儿超声图像模拟。初步结果表明,通过结合两种统计模型(K分布和瑞利分布),我们可以获得最佳的斑点检测特征,以输入无监督分类器并最大化斑点检测性能。

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