首页> 外文会议>International Conference on Space Information Technology; 20071115-17; Wuhan(CN) >Extended target detection based on generalized compound model in high resolution SAR images
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Extended target detection based on generalized compound model in high resolution SAR images

机译:基于广义复合模型的高分辨率SAR图像扩展目标检测

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In high-resolution synthetic aperture radar (SAR) images, the target size may be much larger than the resolution of SAR and the background clutter statistics are generally not Gaussian-distributed. But traditional constant false alarm rate (CFAR) detection algorithm, which based on the Gaussian-distributed model, performs only one test cell at a time and ignores the mutuality information with other cells in the target, so the performance of the CFAR detection algorithm can be substantially degraded. In the paper, an extend target detection method based on the generalized compound model is proposed. Unlike traditional CFAR detection method which distinguish test cell from the background only on the basis of energy contrast, the extend target detection is sensitive to both the contrast and the distribution of the target. We demonstrate the improved performance using the extend target detection method in the real high-resolution SAR images.
机译:在高分辨率合成孔径雷达(SAR)图像中,目标尺寸可能比SAR分辨率大得多,并且背景杂波统计信息通常不是高斯分布的。但是基于高斯分布模型的传统恒虚警率(CFAR)检测算法一次只执行一个测试单元,而忽略了与目标中其他单元的相互信息,因此CFAR检测算法的性能可以被大大降级。提出了一种基于广义复合模型的扩展目标检测方法。与传统的CFAR检测方法不同,传统的CFAR检测方法仅根据能量对比将测试单元与背景区分开,而扩展目标检测对目标的对比和分布均敏感。我们在真实的高分辨率SAR图像中使用扩展目标检测方法演示了改进的性能。

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