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A Correlation-Based Joint CFAR Detector Using Adaptively-Truncated Statistics in SAR Imagery

机译:SAR图像中基于自适应截断统计的基于相关的联合CFAR检测器

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Traditional constant false alarm rate (CFAR) detectors only use the contrast information between ship targets and clutter, and they suffer probability of detection (PD) degradation in multiple target situations. This paper proposes a correlation-based joint CFAR detector using adaptively-truncated statistics (hereafter called TS-2DLNCFAR) in SAR images. The proposed joint CFAR detector exploits the gray intensity correlation characteristics by building a two-dimensional (2D) joint log-normal model as the joint distribution (JPDF) of the clutter, so joint CFAR detection is realized. Inspired by the CFAR detection methodology, we design an adaptive threshold-based clutter truncation method to eliminate the high-intensity outliers, such as interfering ship targets, side-lobes, and ghosts in the background window, whereas the real clutter samples are preserved to the largest degree. A 2D joint log-normal model is accurately built using the adaptively-truncated clutter through simple parameter estimation, so the joint CFAR detection performance is greatly improved. Compared with traditional CFAR detectors, the proposed TS-2DLNCFAR detector achieves a high PD and a low false alarm rate (FAR) in multiple target situations. The superiority of the proposed TS-2DLNCFAR detector is validated on the multi-look Envisat-ASAR and TerraSAR-X data.
机译:传统的恒定误报率(CFAR)检测器仅使用船目标与杂波之间的对比度信息,并且在多个目标情况下遭受检测(PD)退化的可能性。提出了一种在SAR图像中使用自适应截断统计量(以下称为TS-2DLNCFAR)的基于相关性的联合CFAR检测器。提出的联合CFAR检测器通过建立二维(2D)联合对数正态模型作为杂波的联合分布(JPDF)来利用灰度强度相关特性,从而实现联合CFAR检测。受CFAR检测方法的启发,我们设计了一种基于阈值的自适应杂波截断方法,以消除背景窗口中干扰目标,旁瓣和幻影等高强度离群值,而将实际杂波样本保留为最大程度。通过简单的参数估计,使用自适应截断杂波精确地建立了二维联合对数正态模型,从而大大提高了联合CFAR检测性能。与传统的CFAR探测器相比,提出的TS-2DLNCFAR探测器在多个目标情况下实现了较高的PD和较低的误报率(FAR)。所提出的TS-2DLNCFAR检测器的优越性已在多角度Envisat-ASAR和TerraSAR-X数据上得到验证。

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