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首页> 外文期刊>Signal Processing Letters, IEEE >Robust Edge-Stop Functions for Edge-Based Active Contour Models in Medical Image Segmentation
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Robust Edge-Stop Functions for Edge-Based Active Contour Models in Medical Image Segmentation

机译:基于边缘的主动轮廓模型在医学图像分割中的稳健的边缘停止功能

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摘要

Edge-based active contour models are effective in segmenting images with intensity inhomogeneity but often fail when applied to images containing poorly defined boundaries, such as in medical images. Traditional edge-stop functions (ESFs) utilize only gradient information, which fails to stop contour evolution at such boundaries because of the small gradient magnitudes. To address this problem, we propose a framework to construct a group of ESFs for edge-based active contour models to segment objects with poorly defined boundaries. In our framework, which incorporates gradient information as well as probability scores from a standard classifier, the ESF can be constructed from any classification algorithm and applied to any edge-based model using a level set method. Experiments on medical images using the distance regularized level set for edge-based active contour models as well as the k-nearest neighbours and the support vector machine confirm the effectiveness of the proposed approach.
机译:基于边缘的主动轮廓模型可有效地分割强度不均匀的图像,但在应用于边界定义不佳的图像(例如医学图像)时,通常会失败。传统的边缘停止功能(ESF)仅利用梯度信息,由于梯度量小,该信息无法在此类边界处停止轮廓演变。为了解决这个问题,我们提出了一个框架,该框架针对基于边缘的活动轮廓模型构造一组ESF,以分割边界定义不明确的对象。在我们的框架中,它结合了来自标准分类器的梯度信息和概率分数,可以使用任何水平分类法从任何分类算法构建ESF并将其应用于任何基于边缘的模型。使用基于边缘的活动轮廓模型的距离正则化水平集以及k最近邻和支持向量机对医学图像进行的实验证实了该方法的有效性。

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