Model-Based Detection of Acoustically Dense Objects in Ultrasound

Jyotirmoy Banerjee, K. Krishnan
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引用次数: 4

Abstract

Traditional methods of detection tend to under perform in the presence of the strong and variable background clutter that characterize a medical ultrasound image. In this paper, we present a novel diffusion based technique to localize acoustically dense objects in an ultrasound image. The approach is premised on the observation that the topology of noise in ultrasound images is more sensitive to diffusion than that of any such physical object (???). We show that our method when applied to the problem of fetal head detection and automatic measurement of head circumference in 59 obstetric scans compares remarkably well with manually assisted measurements. Based on fetal age estimates and their bounds specified in Standard OB Tables [6], the Gestational Age predictions from automated measurements is found to be within ± 2SD in 95% and 98% of cases when compared with manual measurements by two experts. The framework is general and can be extended to object localization in diverse applications of ultrasound imaging.
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基于模型的超声声密集物体检测
传统的检测方法往往表现不佳,在存在强和可变的背景杂波,表征医学超声图像。在本文中,我们提出了一种新的基于扩散的技术来定位超声图像中的声密集物体。该方法的前提是观察到超声图像中的噪声拓扑比任何此类物理对象的扩散更敏感(???)。我们表明,我们的方法,当应用到59产科扫描的胎儿头检测和自动测量头围的问题非常好地与人工辅助测量比较。根据标准产科表[6]中规定的胎龄估计及其界限,与两位专家手工测量相比,95%和98%的情况下,自动测量的胎龄预测在±2SD范围内。该框架具有通用性,可扩展到各种超声成像应用中的目标定位。
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