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A network of globally coupled chaotic maps for adaptive multi-resolution image segmentation

机译:自适应多分辨率图像分割的全局耦合混沌映射网络

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In this paper, a computational model for image segmentation based on a network of coupled chaotic maps is proposed. Time evolutions of chaotic maps that correspond to a pixel class are synchronized with one another, while this synchronized evolution is desynchronized with respect to time evolution of chaotic maps corresponding to other pixel classes in the same data set. The model presents the following advantages in comparison to conventional pixel classification techniques: 1) the segmentation process is intrinsically parallel; 2) the number of pixel classes can be previous unknown; 3) the model offers a multi-resolution and multi-thresholding segmentation approach; 4) the adaptive pixel moving process makes the model robust to classify ambiguous pixels; and 5) the model obtains good performance and transparent dynamics by utilizing one-dimensional chaotic maps instead of complex neurons as individual elements.
机译:本文提出了一种基于耦合混沌映射网络的图像分割的计算模型。对应于像素类的混沌映射的时间演变彼此同步,而该同步演变是关于与同一数据集中的其他像素类对应的混沌映射的时间演变来同步。该模型与传统的像素分类技术相比,该优点:1)分割过程本质上平行; 2)像素类的数量可以是先前未知的; 3)模型提供多分辨率和多阈值分割方法; 4)自适应像素移动过程使模型稳健地对模糊像素进行分类; 5)模型通过利用一维混沌映射而不是单独的元素来获得良好的性能和透明动力学。

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