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Unsupervised neural-morphological colour image segmentation using the mahalanobis as criteria of resemblance

机译:使用Mahalanobis作为相似标准的无监督的神经形态学彩色图像分割

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In this paper, we present a new unsupervised colour image segmentation algorithm using competitive and morphological concepts. The algorithm is carried out in three processing stages. It starts by an estimation of the density function, followed by a training competitve neural network with a new criterion of resemblance called Mahalanobis distance which detects local maxima of the density function, and ends by the extraction of modal regions using an original method based on the morphological concept. The so detected modes are then used for the classification process. Compared to the K-means clustering or to the clustering approaches based on the different competitive learning schemes, the proposed algorithm has proven, under a number of real and synthetic test images, that it is automatic, has a fast convergence and does not need priori information about the data structure.
机译:在本文中,我们使用竞争和形态概念提出了一种新的无监督彩色图像分割算法。该算法在三个处理阶段进行。它首先估计密度函数,其次是竞争神经网络的培训,具有称为Mahalanobis距离的新标准,称为Mahalanobis距离,该距离检测密度函数的局部最大值,并通过基于原始方法的原始方法来通过提取模态区域来结束形态学概念。然后将所检测到的模式用于分类过程。与基于不同的竞争学习方案的K-Means聚类或群集方法相比,所提出的算法已经证明,在许多真实和合成的测试图像下,它是自动的,具有快速收敛性,不需要先验有关数据结构的信息。

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