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Unsupervised segmentation of gray level Markov model textures with hierarchical self organizing maps

机译:带有层次自组织图的灰度马尔可夫模型纹理的无监督分割

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Segmentation of gray level images into regions of uniform texture is investigated. An unsupervised approach through the use of Kohonen's self organizing map (SOM) and a multilayer version of it, the hierarchical self organizing map (HSOM), is employed to find the regions in an image composed of textures from different classes. For testing, gray level artificial textured images modeled as Markov random fields are used as the input. No parameter estimation is done. The size and the topology of SOM and HSOM are independent from the size of the input image. The segmentation results are very promising.
机译:研究了将灰度图像分割为均匀纹理区域的方法。通过使用Kohonen的自组织图(SOM)和它的多层版本(层次自组织图(HSOM)),采用一种无监督的方法来查找图像中由不同类别的纹理组成的区域。为了进行测试,将建模为马尔可夫随机场的灰度人工纹理图像用作输入。没有参数估计完成。 SOM和HSOM的大小和拓扑与输入图像的大小无关。分割结果非常有前途。

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