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首页> 外文期刊>Engineering Applications of Artificial Intelligence >A novel hybrid model for two-phase image segmentation: GSA based Chan-Vese algorithm
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A novel hybrid model for two-phase image segmentation: GSA based Chan-Vese algorithm

机译:一种新型的两相图像混合模型:基于GSA的Chan-Vese算法

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摘要

The active contours without edges model of Chan and Vese (Chan and Vese, 2001), which has been accepted for two-phase image segmentation is one of the most widely-used methods. It is a region-based segmentation model that utilizes the techniques of curve evolvement and the level set method.Chan-Vese model is a strong and flexible method that is able to segment many types of images compared to other active contours. Nevertheless, improper initial contours may reveal the problem of the Chan-Vese model getting stuck in a local minimum. This situation often provides poor results for the Chan-Vese model. Particularly, this problem occurs in the images that have large intensity differences between local and global structures. In this paper, we present a novel hybrid approach to the Chan-Vese algorithm to bring a solution to the problem of segmentation of these images. The proposed approach is based on the Gravitational Search Algorithm (GSA) developed in Rashedi et al. (2009). The idea is to arrange the fitting energy minimization problem according to a heuristic optimization technique and provide satisfactory segmentation outcomes regardless of the choice of the initial contour.The proposed model has been tested on both several images taken from Weizmann dataset and suitable medical images for the local minima problem. Experiments on the suitable test images prove that the proposed GSA based Chan-Vese model is more accomplished and more robust when compared to the conventional Chan-Vese algorithm. The test results also denote that the proposed algorithm requires much smaller number of iterations (%75 less) to converge than the conventional Chan-Vese algorithm.
机译:Chan和Vese(Chan and Vese,2001)的无边缘活动轮廓模型已被接受用于两相图像分割,是最广泛使用的方法之一。这是一个基于区域的分割模型,利用了曲线演化技术和水平集方法.Chan-Vese模型是一种强大而灵活的方法,与其他活动轮廓相比,它能够分割多种类型的图像。然而,不正确的初始轮廓可能揭示了Chan-Vese模型陷入局部最小值的问题。对于Chan-Vese模型,这种情况通常会提供较差的结果。特别是,此问题出现在局部和全局结构之间的强度差异较大的图像中。在本文中,我们提出了一种新颖的Chan-Vese算法混合方法,以解决这些图像的分割问题。所提出的方法基于Rashedi等人开发的引力搜索算法(GSA)。 (2009)。这个想法是根据启发式优化技术来安排拟合能量最小化问题,并且无论初始轮廓的选择如何都可以提供令人满意的分割结果。该模型已经在来自Weizmann数据集的几张图像和适合该图像的医学图像上进行了测试。局部极小问题。在合适的测试图像上进行的实验证明,与常规的Chan-Vese算法相比,所提出的基于GSA的Chan-Vese模型更完善,更健壮。测试结果还表明,与传统的Chan-Vese算法相比,该算法所需的迭代次数要少得多(减少了75%)。

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