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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >SAR Image Segmentation Based on Hierarchical Visual Semantic and Adaptive Neighborhood Multinomial Latent Model
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SAR Image Segmentation Based on Hierarchical Visual Semantic and Adaptive Neighborhood Multinomial Latent Model

机译:基于分层视觉语义和自适应邻域多项式潜在模型的SAR图像分割

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摘要

A synthetic aperture radar (SAR) imaging system usually produces pairs of bright area and dark area when depicting the ground objects, such as a building or tree and its shadow. Many buildings (trees) are aggregated together to form urban areas (forests). It means that the pairs of bright and dark areas often exist in the aggregated scenes. Conventional unsupervised segmentation approaches usually segment the scenes (e.g., urban areas and forests) into different regions simply according to the gray values of the image. However, a more convincing way is to regard them as the consistent regions. In this paper, we aim at addressing this issue and propose a new SAR image segmentation approach via a hierarchical visual semantic and adaptive neighborhood multinomial latent model. In this approach, the hierarchical visual semantic of SAR images is proposed, which divides SAR images into aggregated, structural, and homogeneous regions. Based on the division, different segmentation methods are chosen for these regions with different characteristics. For the aggregated region, locality-constrained linear coding-based hierarchical clustering is used for segmentation. For the structural region, visual semantic rules are designed for line object location, and a geometric structure window-based multinomial latent model is proposed for segmentation. For the homogeneous region, a multinomial latent model with adaptive window selection is proposed for segmentation. Finally, these results are integrated together to obtain the final segmentation. Experiments on both synthetic and real SAR images indicate that the proposed method achieves promising performances in terms of the consistencies of the regions and the preservations of the edges and line objects.
机译:合成孔径雷达(SAR)成像系统通常在描绘地面物体(例如建筑物或树木及其阴影)时会产生成对的亮区和暗区。许多建筑物(树木)聚集在一起形成市区(森林)。这意味着在聚集的场景中经常存在成对的明暗区域。传统的无监督分割方法通常仅根据图像的灰度值将场景(例如,市区和森林)分割为不同的区域。但是,一种更有说服力的方法是将它们视为一致的区域。在本文中,我们旨在解决这个问题,并提出了一种新的SAR图像分割方法,该方法通过分层视觉语义和自适应邻域多项式潜在模型进行。在这种方法中,提出了SAR图像的分层视觉语义,它将SAR图像分为聚集,结构和同质区域。基于划分,针对具有不同特征的这些区域选择不同的分割方法。对于聚集区域,将基于局部约束的线性编码的层次聚类用于分割。针对结构区域,设计了视觉语义规则用于线对象定位,并提出了基于几何结构窗口的多项式潜在模型进行分割。对于均匀区域,提出了具有自适应窗口选择的多项式潜在模型进行分割。最后,将这些结果整合在一起以获得最终的分割。在合成和真实SAR图像上的实验表明,该方法在区域的一致性以及边缘和线对象的保留方面取得了令人鼓舞的性能。

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