A Novel Hybrid Active Contour Model for Medical Image Segmentation Driven by Legendre Polynomials

Bo Chen, Shan Huang, Wensheng Chen, Zhengrong Liang
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引用次数: 1

Abstract

In this paper, a novel hybrid active contour model for medical image segmentation is proposed, which integrates the global information of image and Legendre level set. It is a region-based segmentation approach, in which the illumination of the regions of interest is represented by a set of Legendre basis functions in a lower dimensional subspace. Firstly, we present a framework which generalizes the Chan-Vese model and segmentation method based on Legendre level set. The weighting parameter is introduced to control the effect of global and local term on the total energy functional. Secondly, a corresponding termination criterion is employed to ensure the evolving curve automatically stops on true boundaries of objects. Thirdly, experiment results on medical images demonstrate that our method is less sensitive to the initial contour and effective to segment images with inhomogeneous intensity distributions.
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基于Legendre多项式的医学图像分割混合主动轮廓模型
本文提出了一种结合图像全局信息和勒让德水平集的医学图像分割混合主动轮廓模型。它是一种基于区域的分割方法,其中感兴趣区域的照明由一组较低维子空间中的勒让德基函数表示。首先,提出了一种推广Chan-Vese模型的框架和基于Legendre水平集的分割方法。引入加权参数来控制全局项和局部项对总能量泛函的影响。其次,采用相应的终止准则,确保进化曲线自动停止在目标的真实边界上;第三,在医学图像上的实验结果表明,该方法对初始轮廓的敏感性较低,能够有效分割强度分布不均匀的图像。
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