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Structural feature learning-based unsupervised semantic segmentation of synthetic aperture radar image

机译:基于结构特征学习的合成孔径雷达图像的无监督语义分割

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摘要

Region map is the sparse representation of a high-resolution synthetic aperture radar (SAR) image on the middle-level semantic layer in its semantic space. Based on the semantic information of the region map, the high-resolution SAR image is divided into hybrid, structural, and homogeneous pixel subspaces. The segmentation of SAR images can be divided into these three subspaces segmentation, of which the segmentation of hybrid subspace has more challenge because of complex structures. There are often many extremely inhomogeneous areas in the hybrid pixel subspace. Are these nonconnected areas in the same or different classes? To solve this problem, a Bayesian learning model with the constraint of sketch characteristic and an initialization method is proposed to construct a structural vector that can reflect the essential features of each extremely inhomogeneous area. Then, the unsupervised segmentation of the hybrid pixel subspace can be realized by using the structural vectors of these areas in this paper. Theoretical analysis and experimental results show that the performance of the hybrid pixel subspace segmentation realized by the structural vectors based on the Bayesian learning model proposed in the paper is better than that only used by hand designing features. (C) 2019 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:区域地图是在其语义空间中中级语义层上的高分辨率合成孔径雷达(SAR)图像的稀疏表示。基于区域图的语义信息,高分辨率SAR图像被分成混合,结构和均匀像素子空间。 SAR图像的分割可以分为这三个子空间分割,其中混合子空间的分割因复杂结构而具有更多挑战。混合像素子空间中通常存在许多极其不均匀的区域。这些非连接区域是否在相同或不同的课程?为了解决这个问题,提出了一种具有草图特征的约束和初始化方法的贝叶斯学习模型,构建一种结构载体,可以反映每个极其不均匀区域的基本特征。然后,通过使用本文中这些区域的结构向量,可以实现混合像素子空间的无监督分割。理论分析和实验结果表明,基于纸张中提出的贝叶斯学习模型的结构矢量实现的混合像素子空间分割的性能优于手工设计特征仅使用。 (c)2019年光学仪表工程师协会(SPIE)

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