系统工程与电子技术 ›› 2018, Vol. 40 ›› Issue (9): 1953-1959.doi: 10.3969/j.issn.1001-506X.2018.09.09

• 传感器与信号处理 • 上一篇    下一篇

基于卷积神经网络的SAR图像舰船目标检测

李健伟, 曲长文, 彭书娟, 邓兵   

  1. 海军航空大学, 山东 烟台 264001
  • 出版日期:2018-08-30 发布日期:2018-09-06

Ship detection in SAR images based on convolutional neural network

LI Jianwei, QU Changwen, PENG Shujuan, DENG Bing   

  1. Naval Aviation University, Yantai 264001, China
  • Online:2018-08-30 Published:2018-09-06

摘要:

近年来,深度学习在物体检测领域取得了非常大的突破,但是鲜有用于合成孔径雷达(synthetic aperture radar, SAR)图像中舰船目标检测,论文将基于深度学习的目标检测方法引入到了SAR图像舰船目标检测。首先分析了目前先进的Faster R-CNN检测算法优点及其在SAR图像舰船检测领域的局限。在此基础上,构建了一个新的SAR图像舰船目标检测数据集SSDD,数据集包含不同分辨率、尺寸、海况、传感器类型等条件下的舰船SAR图像,它可以作为本领域研究人员评价其算法的基准。提出了SAR图像舰船目标检测的新方法,包括特征聚合、迁移学习、损失函数设计和其他应用细节,并在数据集上进行了大量的对比实验。实验结果证明提出的方法可以有更高的检测准确率和更快的检测速度。

Abstract:

Deep learning has led to impressive performance on a variety of object detection tasks recently. However, it is rarely applied in ship detection of synthetic aperture radar (SAR) images. This paper aims to introduce a detector based on deep learning into this field. We analyze the advantages of the state oftheart Faster R-CNN detector in computer vision and limitations in our specific domain. Given this analysis, we propose a dataset and four strategies to improve the detection result. The dataset contains ships in various environments, such as image resolution, ship size, sea condition, and sensor type. It can be a benchmark for researchers to evaluate their algorithms. The strategies include feature concatenation, transfer learning, loss function optimization method, and other implementation details. We conduct some comparison and ablation experiments on our dataset. The result shows that our proposed method obtains better accuracy and higher efficiency.