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Fetal lung segmentation using texture-based boundary enhancement and active contour models

机译:使用基于纹理的边界增强和活动轮廓模型进行胎儿肺分割

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Low signal noise ratio (SNR) of the ultrasound images makes the segmentation of fetal lung a difficult task. In this paper, a novel method using the texture-based boundary enhancement and active contour models is developed to semi-automatically segment the fetal lung from fetal chest ultrasound images. The texture-based boundary enhancement procedure is firstly proposed to enhance boundary regions by using multiple textural features. Then the Expectation Maximization (EM) algorithm followed by a morphological thinning process is applied to identify and obtain the interesting boundaries. Finally, three rectangular regions of interest (ROIs) are manually selected for the fetal chest, the fetal heart, and the fetal spine respectively. After initializing the deformation models, the vector field convolution model (VFC) extracts contours of the fetal chest, the fetal heart, and the fetal spine. The fetal lung is the region within the fetal chest but excluding the fetal heart and the fetal spine. Experiments on real clinical fetal chest ultrasound images demonstrate the feasibility of the proposed method.
机译:超声图像的低信噪比(SNR)使胎儿肺的分割成为一项艰巨的任务。在本文中,开发了一种使用基于纹理的边界增强和活动轮廓模型的新方法来从胎儿胸部超声图像中半自动分割胎儿肺。首先提出了基于纹理的边界增强程序,以通过使用多个纹理特征来增强边界区域。然后应用期望最大化(EM)算法,然后进行形态学细化处理,以识别并获得有趣的边界。最后,分别为胎儿胸部,胎儿心脏和胎儿脊柱手动选择三个矩形感兴趣区域(ROI)。初始化变形模型后,矢量场卷积模型(VFC)提取胎儿胸部,胎儿心脏和胎儿脊柱的轮廓。胎儿肺是胎儿胸部内的区域,但不包括胎儿心脏和胎儿脊柱。在实际的临床胎儿胸部超声图像上的实验证明了该方法的可行性。

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