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Special Section on Biologically-inspired radar and sonar systems - Bionic vision-based synthetic aperture radar image edge detection method in non-subsampled contourlet transform domain

机译:受生物启发的雷达和声纳系统特别节-非仿采样Contourlet变换域中基于仿生视觉的合成孔径雷达图像边缘检测方法

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摘要

For synthetic aperture radar (SAR) images, traditional edge detection methods can hardly extract the complete and true edges since they are sensitive to noise. In this study, the authors propose an edge detection method based on bionic vision in nonsubsampled contourlet transform (NSCT) domain for SAR images, which makes use of the characteristics of NSCT (e.g. multiscale, multidirection edge expression and outstanding edge location) and the mechanisms of strengthening and positioning the image edge by fixational eye movements. First, source images are decomposed in the NSCT domain. The minimum mean squared error (MMSE) filter in the NSCT domain is adopted to reduce speckle noise of SAR images. Movement, difference and competition are applied on each subband to obtain original multiscale and multidirection subband edges. Lipschitz regularity and non-maximum suppression are also adopted to effectively remove noise points. Finally, hysteresis thresholding with adaptive thresholds is introduced to avoid streaking and trial-and-error, and multiscale edge fusion is used to reduce the false alarm rate. Edge extraction results of simulated and real SAR images demonstrate that the proposed method is better than other edge detection methods based on Canny operator, ratio of averages (ROA) operator, ratio of exponentially weighted averages (ROEWA) operator, wavelet modulus maximum and curvelet.
机译:对于合成孔径雷达(SAR)图像,传统的边缘检测方法几乎不能提取出完整的真实边缘,因为它们对噪声敏感。在这项研究中,作者提出了一种基于仿生视觉的非下采样轮廓波变换(NSCT)域中的SAR图像边缘检测方法,该方法利用了NSCT的特征(例如多尺度,多方向边缘表达和突出的边缘位置)及其机理通过注视眼的运动来增强和定位图像边缘的效果。首先,在NSCT域中分解源图像。 NSCT域中的最小均方误差(MMSE)滤波器用于减少SAR图像的斑点噪声。将运动,差异和竞争应用于每个子带,以获得原始的多尺度和多方向子带边缘。 Lipschitz规律性和非最大抑制也被用来有效去除噪声点。最后,引入具有自适应阈值的磁滞阈值以避免条纹和反复试验,并使用多尺度边缘融合来降低虚警率。模拟和真实SAR图像的边缘提取结果表明,该方法优于其他基于Canny算子,平均比率(ROA)算子,指数加权平均比率(ROEWA)算子,小波模极大值和Curvelet的边缘检测方法。

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