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Color Image Segmentation upon a New Unsupervised Approach using Amended Competitive Hebbian Learning

机译:使用修改的竞争性Hebbian学习,彩色图像分割在新的无监督方法上

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This paper proposes a new unsupervised color image segmentation procedure based on the competitive concept, divided into three processing stages. It begins by the estimation of the probability density function, followed by a training competitive neural network with Mahalanobis distance as an activation function. This stage allows detecting the local maxima of the pdf. After that, we use the Competitive Hebbian Learning to analyze the connectivity between the detected maxima of the pdf upon Mahalanobis distance. The so detected groups of Maxima are then used for the segmentation. Compared to the K-means clustering or to the clustering approaches based on the different competitive learning schemes, the proposed approach has proven, under a real and synthetic test images, that does not pass by any thresholding and does not require any prior information on the number of classes nor on the structure of their distributions in the dataset.
机译:本文提出了一种基于竞争概念的新无监督彩色图像分割过程,分为三个处理阶段。它从估计概率密度函数估计,然后是竞技竞争神经网络,Mahalanobis距离作为激活功能。该阶段允许检测PDF的局部最大值。在此之后,我们使用竞争性的Hebbian学习来分析Mahalanobis距离对PDF的检测到的最大值之间的连接。然后将检测到的最大值组用于分割。与基于不同竞争学习计划的K-Means聚类或聚类方法相比,所提出的方法在真实和合成的测试图像下已经证明,该方法不会通过任何阈值,并且不需要任何先前的信息数据集中的类别数量也不是它们的分布式的结构。

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