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Segmentation-based detection of targets in foliage-penetrating SAR images

机译:基于分割的穿透树叶的SAR图像中目标的检测

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Abstract: Segmentation and labeling algorithms for foliage penetrating (FOPEN) ultra-wideband Synthetic Aperture Radar (UWB SAR) images are critical components in providing local context in automatic target recognition algorithms. We develop a statistical estimation-theoretic approach to segmenting and labeling the FOPEN images into foliage and non-foliage regions. The labeled maps enable the use of region-adaptive detectors, such as a constant false-alarm rate detector with region-dependent parameters. Segmentation of the images is achieved by performing a maximum a posteriori (MAP) estimate of the pixel labels. By modeling the conditional distribution with a Symmetric Alpha-Stable density and assuming a Markov random field model for the pixel labels, the resulting posterior probability density function is maximized by using simulated annealing to yield the MAP estimate.!12
机译:摘要:叶子穿透(FOPEN)超宽带合成孔径雷达(UWB SAR)图像的分割和标记算法是在自动目标识别算法中提供局部上下文的关键组件。我们开发了一种统计估计理论方法来将FOPEN图像分割和标记为叶子和非叶子区域。带标签的地图可以使用区域自适应检测器,例如具有依赖于区域的参数的恒定误报率检测器。通过执行像素标签的最大后验(MAP)估计来实现图像的分割。通过使用对称的Alpha稳定密度对条件分布建模并假设像素标签的马尔可夫随机场模型,通过使用模拟退火产生MAP估计,可以最大程度地提高后验概率密度函数!12

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