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A Multi-Scale Approach to Mass Segmentation Using Active Contour Models

机译:使用主动轮廓模型进行大规模分割的多尺度方法

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As an important step of mass classification, mass segmentation plays an important role in computer-aided diagnosis (CAD). In this paper, we propose a novel scheme for breast mass segmentation in mammograms, which is based on level set method and multi-scale analysis. Mammogram is firstly decomposed by Gaussian pyramid into a sequence of images from fine to coarse, the C-V model is then applied at the coarse scale, and the obtained rough contour is used as the initial contour for segmentation at the fine scale. A local active contour (LAC) model based on image local information is utilized to refine the rough contour locally at the fine scale. In addition, the feature of area and gray level extracted from coarse segmentation is used to set the parameters of LAC model automatically to improve the adaptivity of our method. The results show the higher accuracy and robustness of the proposed multi-scale segmentation method than the conventional ones.
机译:作为质量分类的重要步骤,质量分割在计算机辅助诊断(CAD)中起着重要作用。本文提出了一种新颖的乳房X线图中的乳房质量分割方案,其基于水平设定方法和多尺度分析。首先由高斯金字塔将高斯金字塔分解成一系列从精细到粗糙的图像,然后在粗略尺度上施加C-V型,并且所获得的粗糙轮廓用作初始轮廓以精细规模分割。基于图像局部信息的局部活动轮廓(LAC)模型用于以精细刻度本地的粗糙轮廓。此外,从粗略分割中提取的区域和灰度级别的特征用于自动设置LAC模型的参数,以提高方法的适应性。结果表明,所提出的多尺度分段方法的精度和稳健性高于传统的方法。

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