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System and Method for Detection of Fetal Anatomies From Ultrasound Images Using a Constrained Probabilistic Boosting Tree

机译:使用约束概率增强树从超声图像检测胎儿解剖结构的系统和方法

摘要

A method for detecting fetal anatomic features in ultrasound images includes providing an ultrasound image of a fetus, specifying an anatomic feature to be detected in a region S determined by parameter vector θ, providing a sequence of probabilistic boosting tree classifiers, each with a pre-specified height and number of nodes. Each classifier computes a posterior probability P(y|S) where yε{−1,+1}, with P(y=+1|S) representing a probability that region S contains the feature, and P(y=−1|S) representing a probability that region S contains background information. The feature is detected by uniformly sampling a parameter space of parameter vector θ using a first classifier with a sampling interval vector used for training said first classifier, and having each subsequent classifier classify positive samples identified by a preceding classifier using a smaller sampling interval vector used for training said preceding classifier. Each classifier forms a union of its positive samples with those of the preceding classifier.
机译:一种用于检测超声图像中胎儿解剖特征的方法,包括提供胎儿的超声图像,在由参数矢量θ确定的区域S中指定要检测的解剖特征,提供一系列概率提升树分类器,每个分类器都带有指定的高度和节点数。每个分类器计算后验概率P(y | S),其中yε{-1,+ 1},其中P(y = + 1 | S)表示区域S包含特征的概率,而P(y = -1 | 1) S)表示区域S包含背景信息的概率。通过使用具有用于训练所述第一分类器的采样间隔向量的第一分类器来均匀采样参数向量θ的参数空间,并且使每个随后的分类器使用所使用的较小采样间隔向量来对由先前的分类器识别的正样本进行分类,来检测特征。用于训练上述分类器。每个分类器将其正样本与先前分类器的正样本合并。

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