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Semantic labelling of SAR images with conditional random fields on region adjacency graph

机译:区域邻接图上条件随机场对SAR图像的语义标记

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摘要

Scene segmentation and semantic labelling are important for analysing and understanding synthetic aperture radar (SAR) images. In this study, the authors propose an effective and efficient labelling method for SAR images with conditional random fields on a region adjacency graph (CRF-RAG). More precisely, for an SAR image, a region adjacency graph (RAG) representation is firstly built on an initially over-segmentation of the image. Subsequently, a conditional random field (CRF) model is established over the RAG instead of over pixels. To train and infer the CRF-RAG model, a fast max-margin training strategy and the graph cut optimisation method are finally employed. As the CRF model is based on RAG, the computation complexity of the model can be reduced significantly. Compared to the Markov random field (MRF) model on RAG, the proposed CRF-RAG model is more efficient to incorporate different measures of SAR images, such as scattering intensity, texture and image context, into a unified model. Experiments on the TerraSAR-X imagery achieve promising results with modest computation cost, which validates the generality and flexibility of the proposed method.
机译:场景分割和语义标记对于分析和理解合成孔径雷达(SAR)图像非常重要。在这项研究中,作者为区域邻接图(CRF-RAG)上的条件随机场的SAR图像提出了一种有效的标记方法。更精确地,对于SAR图像,首先在图像的最初过度分割的基础上建立区域邻接图(RAG)表示。随后,在RAG上而不是像素上建立条件随机场(CRF)模型。为了训练和推导CRF-RAG模型,最终采用了快速最大边距训练策略和图割优化方法。由于CRF模型基于RAG,因此可以大大降低模型的计算复杂度。与RAG上的马尔可夫随机场(MRF)模型相比,所提出的CRF-RAG模型更有效地将SAR图像的不同度量(例如散射强度,纹理和图像上下文)合并到统一模型中。在TerraSAR-X影像上进行的实验以适中的计算成本获得了可喜的结果,这证明了该方法的通用性和灵活性。

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