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A novel target detection method for SAR images based on shadow proposal and saliency analysis

机译:基于阴影建议和显着性分析的SAR图像目标检测新方法

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摘要

Conventional synthetic aperture radar (SAR) based target detection methods generally use high intensity pixels in the pre-screening stage while ignoring shadow information. Furthermore, they cannot accurately extract the target area and also have poor performance in cluttered environments. To solve this problem, a novel SAR target detection method which combines shadow proposal and saliency analysis is presented in this paper. The detection process is divided into shadow proposal, saliency detection and One-Class Support Vector Machine (OC-SVM) screening stages. In the shadow proposal stage, localizing targets is performed first with the detected shadow regions to generate proposal chips that may contain potential targets. Then saliency detection is conducted to extract salient regions of the proposal chips using local spatial autocorrelation and significance tests. Afterwards, in the last stage, the OC-SVM is employed to identify the real targets from the salient regions. Experimental results show that the proposed saliency detection method possesses higher detection accuracy than several state of the art methods on SAR images. Furthermore, the proposed SAR target detection method is demonstrated to be robust under different imaging environments.
机译:基于常规合成孔径雷达(SAR)的目标检测方法通常在预筛查阶段使用高强度像素,而忽略阴影信息。此外,它们不能准确地提取目标区域,并且在混乱的环境中性能也很差。针对这一问题,提出了一种结合阴影建议和显着性分析的SAR目标检测新方法。检测过程分为影子建议,显着性检测和一类支持向量机(OC-SVM)筛选阶段。在影子提案阶段,首先使用检测到的影子区域执行定位目标,以生成可能包含潜在目标的提案芯片。然后进行显着性检测,以使用局部空间自相关和显着性检验来提取建议芯片的显着区域。之后,在最后阶段,使用OC-SVM从显着区域识别真实目标。实验结果表明,所提出的显着性检测方法具有比几种先进的SAR图像检测方法更高的检测精度。此外,所提出的SAR目标检测方法被证明在不同的成像环境下是鲁棒的。

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