Ship target detection method based on improved CenterNet in synthetic aperture radar images

Hongtu Xie, Xinqiao Jiang, Jiaxing Chen, Jian Zhang, Xiao Hu, Guoqian Wang, Kai Xie
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Abstract

Deep learning has been widely used for the ship target detection in the synthetic aperture radar (SAR) images. The existing researches mainly uses the anchor frame-based detection method to generate the candidate frames to extract the specific targets. However, this method requires the additional computing resources to filter out the many repeated candidate frames, which will lead to the poor target positioning accuracy and low detection efficiency. To solve these problems, this paper constructs an anchor-free frame for the ship target detection in the SAR images. An improved lightweight detection method based on the target key point is proposed for the real-time detection of the SAR images, which can achieve the rapid and accurate positioning of the ship targets in the SAR images. The experimental results prove that the proposed method has the better detection performance and stronger generalization capability, which is beneficial to realize the real-time detection of the ship targets.
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基于改进CenterNet的合成孔径雷达图像舰船目标检测方法
深度学习已广泛应用于合成孔径雷达(SAR)图像中的舰船目标检测。现有研究主要采用基于锚帧的检测方法生成候选帧来提取特定目标。然而,该方法需要额外的计算资源来过滤掉许多重复的候选帧,这将导致目标定位精度差,检测效率低。为了解决这些问题,本文构建了无锚框架用于SAR图像中的船舶目标检测。针对SAR图像的实时检测,提出了一种改进的基于目标关键点的轻量化检测方法,可实现对SAR图像中舰船目标的快速准确定位。实验结果表明,该方法具有较好的检测性能和较强的泛化能力,有利于实现对舰船目标的实时检测。
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