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New building signature extraction method from single very high-resolution synthetic aperture radar images based on symmetric analysis

机译:基于对称分析的单幅超高分辨率合成孔径雷达图像建筑物特征提取新方法

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摘要

To monitor urban areas using a synthetic aperture radar (SAR) sensor, we propose a symmetric analysis-based building signature extraction method. Instead of using separated algorithms, a unified framework is proposed to extract both layover and shadow areas. Since these two primitives usually exhibit long strip patterns in very-high-resolution SAR images, symmetry axes are first delineated. After that, local features are extracted from both symmetry and range direction to better distinguish different primitives. Then, these local radiometric features are used to identify different categories (layover, shadow, and background) via an efficient multiclass logistic regression classifier. To discriminate individual primitives, geometric information is adopted via an improved Ramer Douglas Peucker algorithm, which also simplifies the parameters for describing these primitives. To further enhance accuracy, combinatory analysis is implemented to exclude some false detections, and then shadow areas are extended via a local region growing method. The proposed approach is tested on a 0.75-m resolution airborne C band SAR image. The experiments are carried out under both small-and large-scale scenes, and the comparative results show our method has some advantages in low-contrast target detection and false-alarm elimination. (C) 2015 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:为了使用合成孔径雷达(SAR)传感器监视市区,我们提出了一种基于对称分析的建筑特征提取方法。代替使用单独的算法,提出了一个统一的框架来提取覆盖区域和阴影区域。由于这两个图元通常在非常高分辨率的SAR图像中显示出长条形图案,因此首先要画出对称轴。之后,从对称和距离方向提取局部特征,以更好地区分不同的图元。然后,这些局部辐射特征通过有效的多类逻辑回归分类器用于识别不同的类别(覆盖,阴影和背景)。为了区分单个图元,通过改进的Ramer Douglas Peucker算法采用了几何信息,该算法还简化了用于描述这些图元的参数。为了进一步提高准确性,实施了组合分析以排除某些错误检测,然后通过局部区域生长方法扩展阴影区域。该方法在0.75-m分辨率的机载C波段SAR图像上进行了测试。在小型和大型场景下均进行了实验,比较结果表明,该方法在低对比度目标检测和虚警消除方面具有一定优势。 (C)2015年光电仪器工程师协会(SPIE)

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