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Segmenation of color images using a two-stage self-organizing network

机译:使用两阶段自组织网络对彩色图像进行分割

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We propose a two-stage hierarchical artificial neural network for the segmentation of color images based on the Kohonen self-organizing map (SOM). The first stage of the network employs a fixed-size two-dimensional feature map that captures the dominant colors of an image in an unsupervised mode. The second stage combines a variable-sized one-dimensional feature map and color merging to control the number of color clusters that is used for segmentation. A post-processing noise-filtering stage is applied to improve segmentation quality. Experi- ments confirm that the self-learning ability, fault tolerance and adaptability of the two-stage SOM lead to a good segmentation results.
机译:我们提出了基于Kohonen自组织图(SOM)的彩色图像分割的两阶段分层人工神经网络。网络的第一阶段采用固定大小的二维特征图,该图以无监督模式捕获图像的主色。第二阶段将可变大小的一维特征图和颜色合并在一起,以控​​制用于分割的颜色簇的数量。后处理噪声过滤阶段用于提高分割质量。实验证实,两阶段SOM的自学习能力,容错能力和适应性可导致良好的分割结果。

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