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A novel method with a deep network and directional edges for automatic detection of a fetal head

机译:一种新型网络和定向边缘的新方法,用于自动检测胎头

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In this paper, we propose a novel method for the automatic detection of fetal head in 2D ultrasound images. Fetal head detection has been a challenging task, as the ultrasound images usually have poor quality, the structures contained in the images are complex, and the gray scale distribution is highly variable. Our approach is based on a deep belief network and a modified circle detection method. The whole process can be divided into two steps: first, a deep learning architecture is applied to search the whole image and determine the result patch that contains the entire fetal head; second, a modified circle detection method is used along with Hough transform to detect the position and size of the fetal head. In order to validate our method, experiments are performed on both synthetic data and clinic ultrasound data. A good performance of the proposed method is shown in the paper.
机译:在本文中,我们提出了一种用于在2D超声图像中自动检测胎头的新方法。胎头检测是一个具有挑战性的任务,因为超声图像通常具有差的质量,所包含在图像中的结构是复杂的,并且灰度分布是高度变化的。我们的方法是基于深度信仰网络和改进的圆形检测方法。整个过程可分为两个步骤:首先,应用深度学习架构来搜索整个图像并确定包含整个胎头的结果贴片;其次,使用改进的圆形检测方法以及霍夫变换来检测胎儿头部的位置和尺寸。为了验证我们的方法,对合成数据和诊所超声数据进行实验。纸张显示了该方法的良好性能。

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