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A new SAR chip image segmentation method by exploiting spatial relation between target and shadow

机译:利用目标与阴影之间空间关系的SAR芯片图像分割新方法

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Synthetic aperture radar (SAR) chip segmentation is a crucial step in SAR automatic target recognition. When interested objects are placed on the ground, shadow is observed, and then the goal of SAR chip segmentation is to delineate target and shadow regions from background clutter. Due to fluctuations in SAR images, purely intensity-based methods lost many meaningful target and shadow regions. This drawback maybe conquered by introducing extra contextual information. The spatial relation between target and shadow regions is a kind of important contextual information, but rarely exploited in previous methods. In this paper, according to SAR imaging geometry, we conclude that target and shadow regions should be connected along the range direction. Based on this inter-connectivity between target and shadow regions, a new SAR chip segmentation method called SRPF-MRF is proposed. The new method introduces a Spatial Relational Potential Function (SRPF) term as constraint on the inter-connectivity between target and shadow regions, into Markov Random Field (MRF) based segmentation method. By SRPF-MRF segmentation, the segmented target and shadow is more complete, and therefore brings benefits to the subsequent feature extraction and object recognition. Finally experimental results on MSTAR dataset are given to show the superiority of SRPF-MRF method.
机译:合成孔径雷达(SAR)芯片分割是SAR自动目标识别的重要步骤。当感兴趣的对象放在地面上时,观察到阴影,然后SAR芯片分割的目标是从背景杂波中描绘目标和影子区域。由于SAR图像的波动,基于强度的方法损失了许多有意义的目标和影子区域。通过引入额外的上下文信息,可以征服此缺点。目标和影子区域之间的空间关系是一种重要的语境信息,但很少在以前的方法中剥削。本文根据SAR成像几何形状,我们得出结论,目标和影子区域应沿着范围方向连接。基于目标和影子区域之间的这种间相互作用,提出了一种名为SRPF-MRF的新的SAR芯片分段方法。新方法将空间关系势函数(SRPF)术语引入对目标和影子区域之间的连接间之间的限制,基于Markov随机字段(MRF)的分段方法。通过SRPF-MRF分割,分段目标和阴影更加完整,因此为随后的特征提取和对象识别带来了益处。最后对MSTAR数据集进行实验结果表明SRPF-MRF方法的优越性。

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