SAR target image edge detection based on CNN

Wozhan Li, Xiaochuang Wu, Qiang Yang
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Abstract

Aiming at the problems that the classical edge detection method is easily affected by noise and has low detection accuracy when applied to SAR target images, this paper studies the detection performance of the classical edge detection method Canny, CNN-based edge detection methods Holistically Nested Edge Detection (HED) and Richer Convolutional Features (RCF) when applied to SAR target images for the first time. The detection performance is evaluated using the MSTAR dataset, and the detection results of each method are compared based on the common evaluation indicators of image edge detection: F-measure, PR curve, and FPS. Canny's F-measure (ODS) is 0.611 and FPS is 43. The F-measure (ODS) of HED is 0.758 and the FPS is 18. The F-measure (ODS) of RCF is 0.729 and the FPS is 24. The F-measure (ODS) of RCF-MS is 0.753 and the FPS is 6. On the MSTAR dataset, the F-measure of HED is the best, which is 24.06% higher than Canny. RCF and RCF-MS also performed well, which were 19.31% and 23.24% higher than Canny respectively. The edge detection method based on CNN has higher F-measure, is less affected by noise, and has less loss of edge details. When applied to SAR images affected by speckle noise, the performance is much better than Canny, but there is still a shortage of slightly worse computing speed.
基于CNN的SAR目标图像边缘检测
针对经典边缘检测方法在应用于SAR目标图像时容易受噪声影响、检测精度低等问题,本文首次研究了经典边缘检测方法Canny、基于cnn的边缘检测方法整体嵌套边缘检测(HED)和更丰富卷积特征(RCF)在SAR目标图像中的检测性能。利用MSTAR数据集对检测性能进行评价,并根据图像边缘检测常用评价指标F-measure、PR曲线和FPS对各方法的检测结果进行比较。Canny的F-measure (ODS)是0.611,FPS是43。HED的F-measure (ODS)为0.758,FPS为18。RCF的F-measure (ODS)为0.729,FPS为24。RCF-MS的F-measure (ODS)为0.753,FPS为6。在MSTAR数据集上,HED的f值是最好的,比Canny高24.06%。RCF和RCF- ms也表现良好,分别比Canny高19.31%和23.24%。基于CNN的边缘检测方法具有更高的f值,受噪声影响较小,边缘细节损失较小。当应用于受散斑噪声影响的SAR图像时,性能比Canny好得多,但仍存在计算速度稍差的不足。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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