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Multiple Active Contours Guided by Differential Evolution for Medical Image Segmentation

机译:差分进化指导的多个主动轮廓用于医学图像分割

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摘要

This paper presents a new image segmentation method based on multiple active contours guided by differential evolution, called MACDE. The segmentation method uses differential evolution over a polar coordinate system to increase the exploration and exploitation capabilities regarding the classical active contour model. To evaluate the performance of the proposed method, a set of synthetic images with complex objects, Gaussian noise, and deep concavities is introduced. Subsequently, MACDE is applied on datasets of sequential computed tomography and magnetic resonance images which contain the human heart and the human left ventricle, respectively. Finally, to obtain a quantitative and qualitative evaluation of the medical image segmentations compared to regions outlined by experts, a set of distance and similarity metrics has been adopted. According to the experimental results, MACDE outperforms the classical active contour model and the interactive Tseng method in terms of efficiency and robustness for obtaining the optimal control points and attains a high accuracy segmentation.
机译:本文提出了一种新的基于差分演化指导的活动轮廓的图像分割方法,称为MACDE。分割方法使用极坐标系上的差分演化来增加有关经典活动轮廓模型的勘探和开发能力。为了评估该方法的性能,介绍了一组具有复杂对象,高斯噪声和深凹度的合成图像。随后,将MACDE应用于分别包含人心脏和人左心室的顺序计算机断层扫描和磁共振图像的数据集。最后,为了获得与专家概述的区域相比医学图像分割的定量和定性评估,采用了一组距离和相似性度量。根据实验结果,MACDE在效率和鲁棒性方面均优于经典主动轮廓模型和交互式Tseng方法,从而获得了最佳控制点,并获得了高精度的分割。

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