A modified faster R-CNN based on CFAR algorithm for SAR ship detection

Miao Kang, Xiangguang Leng, Zhao Lin, K. Ji
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引用次数: 168

Abstract

SAR ship detection is essential to marine monitoring. Recently, with the development of the deep neural network and the spring of the SAR images, SAR ship detection based on deep neural network has been a trend. However, the multi-scale ships in SAR images cause the undesirable differences of features, which decrease the accuracy of ship detection based on deep learning methods. Aiming at this problem, this paper modifies the Faster R-CNN, a state-of-the-art object detection networks, by the traditional constant false alarm rate (CFAR). Taking the objects proposals generated by Faster R-CNN for the guard windows of CFAR algorithm, this method picks up the small-sized targets. By reevaluating the bounding boxes which have relative low classification scores in detection network, this method gain better performance of detection.
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基于CFAR算法的改进更快R-CNN SAR舰船检测
SAR船舶探测是海洋监测的重要组成部分。近年来,随着深度神经网络的发展和SAR图像的兴起,基于深度神经网络的SAR船舶检测已成为一种趋势。然而,由于SAR图像中存在多尺度的船舶特征差异,降低了基于深度学习方法的船舶检测精度。针对这一问题,本文采用传统的恒虚警率(constant false alarm rate, CFAR)对最先进的目标检测网络Faster R-CNN进行了改进。该方法将Faster R-CNN生成的目标建议用于CFAR算法的保护窗口,提取出小尺寸目标。该方法通过对检测网络中分类分数相对较低的边界框进行重新评估,获得了更好的检测性能。
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