Distribution-Based Active Contour Model for Medical Image Segmentation

Yanrong Guo, Jianguo Jiang, Shijie Hao, Shu Zhan
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引用次数: 9

Abstract

Having being regarded as one of the classical methods in image segmentation, geodesic active contours (GAC) have the flaws of boundary leaking and expensive evolving time. In this paper, we present a distribution-based active contour model by measuring the Bhattacharyya distance between probability distributions of the object and background along with the evolution of GAC model. Due to combining the image cues of edge and statistical information which is computed by using kernel density estimation, this hybrid methodology prevents the boundary leaking as well as the under segmentation problem. Experimental results on the medical images show the improvements of our method in terms of comparisons with original GAC model, Bhattacharyya gradient flow, texture-based GAC and Li's active contour model.
基于分布的医学图像分割主动轮廓模型
测地线活动轮廓被认为是图像分割的经典方法之一,但存在边界泄漏和演化时间昂贵的缺陷。随着GAC模型的发展,通过测量目标与背景概率分布之间的Bhattacharyya距离,提出了一种基于分布的活动轮廓模型。该方法将边缘图像线索与核密度估计计算的统计信息相结合,避免了边界泄漏和分割不足的问题。在医学图像上的实验结果表明,与原始GAC模型、Bhattacharyya梯度流、基于纹理的GAC模型和Li的活动轮廓模型相比,我们的方法得到了改进。
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