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Semantic Conditional Random Field for Object Based SAR Image Segmentation

机译:基于对象的SAR图像分割的语义条件随机场

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Conditional random filed (CRF) model relaxes the conditional independence of the observed data and simultaneously captures the spatial contextual information. However, the single spatial contextual model is difficult to describe the heterogeneous structures of the synthetic aperture radar (SAR) images. This paper propose an semantic conditional random field (SCRF), which integrate the semantic space and pixel space for object-based SAR image segmentation. Specifically, the SAR image is divided into aggregated, structural and homogeneous subspaces by using the hierarchical semantic model. Then, we design gaussian kernel function, geometric kernel function and uniform kernel function to adaptively describe the spatial contextual constraints in the different subspaces. These kernel functions are incorporated into the pairwise potential of CRF model to improve the ability of the model. Afterwards, the piecewise training and Bayesian inference are proposed to achieve the object-based segmentation. Experiments on the synthetic and real SAR images demonstrate the effectiveness of the proposed method in the semantic consistency and detail preservations.
机译:条件随机场(CRF)模型放宽了观测数据的条件独立性,同时捕获了空间上下文信息。但是,单个空间上下文模型很难描述合成孔径雷达(SAR)图像的异构结构。本文提出了一种语义条件随机场(SCRF),该语义场将语义空间和像素空间结合在一起,用于基于对象的SAR图像分割。具体而言,通过使用分层语义模型将SAR图像分为聚集的,结构的和同质的子空间。然后,我们设计了高斯核函数,几何核函数和统一核函数,以自适应地描述不同子空间中的空间上下文约束。这些内核函数被合并到CRF模型的成对潜力中,以提高模型的能力。然后,提出了分段训练和贝叶斯推理,以实现基于对象的分割。对合成和真实SAR图像进行的实验证明了该方法在语义一致性和细节保留方面的有效性。

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