首页> 外文会议>Computational Intelligence for Image Processing, 2009. CIIP '09 >Contextual classification of high-resolution satellite images
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Contextual classification of high-resolution satellite images

机译:高分辨率卫星图像的上下文分类

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We propose a non-homogeneous conditional random field built over an adjacency graph of superpixels for contextual classification of high-resolution satellite images. By introducing the contextual histogram descriptor, our model includes spatially dependent unary and pairwise potentials that capture contextual interactions of the data as well as the labels. This results the non-homogeneity of the fields which improves the accuracy of the classification. Furthermore, our discriminative model performs a multi-cue combination by incorporating efficiently color, texture, edge, curvilinear continuity and familiar configuration cues. As for potentials, both local and global feature functions are learned using joint boosting whereas a likelihood ratio is learned to derive the pairwise edge potential. In this model, the optimal scene interpretation is inferred using a cluster sampling method, the Swendsen-Wang Cut algorithm. Promising results are shown on SPOT-5 satellite images.
机译:我们提出了一种基于超像素邻接图的非均匀条件随机场,用于高分辨率卫星图像的上下文分类。通过引入上下文直方图描述符,我们的模型包括空间相关的一元和成对电势,它们捕获了数据以及标签的上下文交互。这导致了场的非均匀性,从而提高了分类的准确性。此外,我们的判别模型通过有效地合并颜色,纹理,边缘,曲线连续性和熟悉的配置提示来执行多提示组合。至于电势,使用联合增强学习局部和全局特征函数,而学习似然比以导出成对边缘电势。在该模型中,使用集群采样方法(Swendsen-Wang Cut算法)推断出最佳场景解释。有希望的结果显示在SPOT-5卫星图像上。

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