首页> 外文会议>Conference on Remotely Sensed Data and Information; 20070525-27; Nanjing(CN) >Remote sensing image segmentation based on self-organizing map at multiple-scale
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Remote sensing image segmentation based on self-organizing map at multiple-scale

机译:基于多尺度自组织图的遥感图像分割

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This paper proposes a segmentation method based on K-mean and SOM network. Firstly remote sensing image is decomposed by wavelet transform at multiple-scale. Secondly the directional eigenvector of the image is constructed based on the wavelet transform. At coarser scale, we construct 4-dimension eigenvector with feature images, and the images are roughly segmented by K-means algorithm. Then we construct 4-dimension eigenvector with other feature images at fine scale. Based on the results in K-means segmentation and the eigenvector of remote-sensing images at fine scale the images are segmented by SOM network. The experiments about the images segmentation are done in two different ways, one of which is K-means and SOM network simultaneously, and the other of which is mere K-mean. The experiments show that the former has better segmentation results and higher efficiency.
机译:提出了一种基于K均值和SOM网络的分割方法。首先利用小波变换对遥感图像进行多尺度分解。其次,基于小波变换构造图像的方向特征向量。在较粗的尺度上,我们用特征图像构造4维特征向量,并通过K-means算法对图像进行粗略分割。然后,我们与其他特征图像以精细比例构造4维特征向量。基于K均值分割的结果和精细尺度的遥感图像的特征向量,通过SOM网络对图像进行分割。关于图像分割的实验有两种不同的方式,一种是同时使用K-means和SOM网络,另一种是仅使用K-mean。实验表明,前者具有更好的分割效果和更高的效率。

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