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Mean-shift and hierarchical clustering for textured polarimetric SAR image segmentation/classification

机译:均值漂移和层次聚类用于纹理极化SAR图像分割/分类

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Image segmentation and unsupervised classification are difficult problems. We propose to combine both. A clustering process is applied over segment mean values. Only large segments are considered. The clustering is composed of a mean-shift step and a hierarchical clustering step. The hierarchical grouping is based upon a powerful segmentation technique previously developed. The approach is applied on a 9-look polarimetric SAR image. Textured and non-textured image regions are considered. The K and Wishart distributions are used respectively. The unsupervised classification results can be very useful for image analysis and further supervised classification. The obtained region groups constitute an important simplification of the image.
机译:图像分割和无监督分类是困难的问题。我们建议将两者结合起来。对段均值应用聚类过程。仅考虑大的细分市场。聚类由均值移动步骤和分层聚类步骤组成。分层分组基于以前开发的强大的分割技术。该方法应用于9视极化SAR图像。考虑纹理化和非纹理化的图像区域。分别使用K和Wishart分布。非监督分类结果对于图像分析和进一步监督分类可能非常有用。所获得的区域组构成了图像的重要简化。

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