系统工程与电子技术 ›› 2026, Vol. 48 ›› Issue (7): 2241-2250.doi: 10.12305/j.issn.1001-506X.2026.07.11

• 传感器与信号处理 • 上一篇    

面向高效检测的YOLOv11轻量化SAR图像船舶检测模型

付卫红(), 彭文洪, 刘乃安   

  1. 西安电子科技大学通信工程学院,陕西 西安 710071
  • 收稿日期:2025-04-16 修回日期:2025-08-20 接受日期:2025-08-22 出版日期:2025-12-10 发布日期:2025-12-10
  • 通讯作者: 付卫红 E-mail:whfu@mail.xidian.edu.cn

Lightweight SAR image detection model for efficient ship detection based on YOLOv11

Weihong FU(), Wenhong PENG, Naian LIU   

  1. School of Telecommunications Engineering,Xidian University,Xi’an 710071,China
  • Received:2025-04-16 Revised:2025-08-20 Accepted:2025-08-22 Online:2025-12-10 Published:2025-12-10
  • Contact: Weihong FU E-mail:whfu@mail.xidian.edu.cn

摘要:

针对当前合成孔径雷达图像船舶检测算法存在模型冗余高、计算复杂、实时性差的问题,提出一种基于EfficientNetv2的轻量级特征优化YOLO (you only look once)检测方法,以提升检测精度并降低模型复杂度。所提方法以EfficientNetv2替代YOLOv11原有骨干网络,有效压缩参数量并保留特征提取能力。在颈部网络中引入扩展残差模块和空间通道重构卷积模块,增强上下文感知与细粒度表达。设计基于锚框质量的PIoUv2定位损失函数,提高目标回归精度。通过合适的剪枝策略精简模型结构,提升推理效率。在高分辨率合成孔径雷达(synthetic aperture radar,SAR)图像船舶数据集和SAR舰船检测数据集两个典型SAR船舶检测数据集上的实验结果表明,所提方法在保证检测精度的同时,显著降低计算量与推理时间,具备良好的多场景适应能力与实际应用潜力,为雷达图像检测轻量化平台提供可行方案。

关键词: 合成孔径雷达图像, 轻量化, 特征提取, 船舶检测, 目标检测

Abstract:

To address the issues of high model redundancy, computational complexity, and poor real-time performance in current sythetic aperture radar (SAR) image ship detection algorithms, this paper proposes a detection method of lightweight feature optimizetion based on EfficientNetv2 YOLO (you only look once) aimed at improving detection accuracy while reducing model complexity. It replaces YOLOv11 original backbone network with EfficientNetv2, effectively compressing parameters while preserving feature extraction capability. In the neck network, a dilated residual module and a spatial-channel reconstruction convolution module are introduced to enhance contextual awareness and fine-grained feature representation. A PIoUv2 localization loss function based on anchor box quality is designed to improve target regression accuracy. An appropriate pruning strategy is employed to streamline the model structure and enhance inference efficiency. Experimental results on two benchmark SAR ship detection datasets, HRSID(SAR Ship Detection Dataset, SSDD) and SSDD(High Resdution SAR Image Dataset, HRSID), demonstrate that the proposed method significantly reduces computational overhead and inference time while maintaining high detection accuracy. The method exhibits strong adaptability across diverse scenarios and holds substantial potential for practical applications, providing a viable solution for lightweight platforms in radar image detection.

Key words: synthetic aperture radar (SAR) image, lightweight, feature extraction, ship detection, target detection

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