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Genetic algorithm based segmentation of high resolution multispectral images using GMRF model

机译:基于遗传算法的GMRF模型对高分辨率多光谱图像的分割

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This paper examines hybrid genetic algorithm and Gaussian Markov random field model based method for unsupervised segmentation of multi-spectral textured images. It also evaluates the popular unsupervised image segmentation approaches, Genetic algorithm (GA) based clustering and simple Gaussian Markov random field (GMRF) model with the hybrid GA-GMRF method for high spatial resolution textured imagery. Each method is described and the compatibility of each method with the textured image is examined. It is observed that GA based clustering is more suitable for medium resolution imagery and for images without textures. GMRF model using iterated conditional modes (ICM) algorithm which gives desirable results for textured images, requires several iteration steps to approximate near optimal solutions. The hybrid GA-MRF method, in which the powerful global exploration of GA is used to initialize the ICM algorithm, has found more promising and gives improved results in terms of both accuracy and time complexity than the two other methods for multi-spectral textured images.
机译:本文研究了基于混合遗传算法和高斯马尔可夫随机场模型的多光谱纹理图像无监督分割方法。它还使用混合GA-GMRF方法评估了流行的无监督图像分割方法,基于遗传算法(GA)的聚类和简单的高斯马尔可夫随机场(GMRF)模型,从而获得了高空间分辨率纹理图像。描述了每种方法,并检查了每种方法与纹理图像的兼容性。可以看出,基于GA的聚类更适合中分辨率图像和无纹理图像。使用迭代条件模式(ICM)算法为纹理图像提供理想结果的GMRF模型,需要几个迭代步骤才能逼近最佳解。与其他两种多光谱纹理图像方法相比,混合GA-MRF方法发现了更有希望的方法,并且在准确性和时间复杂度方面均提供了改进的结果,其中GA的强大全局探索方法用于初始化ICM算法。 。

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