融合多尺度特征的SAR图像目标检测方法
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南京航空航天大学电子信息工程学院 南京 210016

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TN957.52;TN911.73

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Multiscale feature fusion for object detection in SAR images
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College of Electronic and Information Engineering, Nanjing University of Aeronautics and Astronautics,Nanjing 210016, China

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    摘要:

    针对合成孔径雷达图像中相干斑噪声干扰、低信噪比及目标多尺度散射特性导致的目标检测精度衰减与小目标漏检问题,提出一种兼顾特征表征能力与实时性的轻量化检测模型XMNet。XMNet在主干网络部分引入改进型单头视觉Transformer,通过全局注意力机制强化上下文语义关联;设计跨层级多路径聚合网络作为颈部结构,融合动态上采样与并行多尺度卷积模块,优化多尺度特征表征;新增高分辨率检测层,利用浅层高分辨率特征增强小目标细节捕捉能力。在MSAR-1.0数据集上的实验表明:全类别平均检测精度达90.4%,较基准模型提升8.7%;飞机类小目标检测精度显著提高20.1%,参数量仅增加2 M,推理检测速度达到185 FPS;与FCOS、CenterNet等9个先进方法对比,XMNet在检测精度与计算效率综合指标上排名首位。XMNet通过跨层级注意力机制与多尺度特征融合的协同设计,有效解决了SAR图像中多尺度目标特征丢失与实时性难以兼顾的难题。其轻量化特性与高检测精度为各类SAR平台的实时遥感监测提供了可行的工程化解决方案,尤其在小目标密集的复杂场景中展现出显著优势。

    Abstract:

    To address the issues of target detection accuracy degradation and small target miss detection caused by speckle noise interference, low signal-to-noise ratio, and multi-scale scattering characteristics of targets in Synthetic Aperture Radar images, this paper proposes a lightweight detection model named XMNet, which balances feature representation capability and real-time performance. XMNet incorporates an improved single-Head vision Transformer into the backbone network to strengthen contextual semantic correlations through global attention mechanisms. A cross-layer multi-path aggregation network is designed as the neck structure, integrating dynamic upsampling and a parallel multi-scale convolution module to optimize multi-scale feature representation. An additional high-resolution detection layer is introduced to leverage shallow high-resolution features, enhancing detail capture capability for small targets. Experiments on the MSAR-1.0 dataset demonstrate that XMNet achieves a mean average precision of 90.4% across all categories, representing an increase of 8.7% over the baseline model. Detection accuracy for small aircraft targets significantly improves by 20.1%, with only a 2-million parameter increase while achieving an inference speed of 185 FPS. When compared against nine advanced methods including FCOS and CenterNet, XMNet ranks first in comprehensive metrics balancing detection accuracy and computational efficiency. Through the design of cross-layer attention mechanisms and multi-scale feature fusion, XMNet effectively resolves the challenge of balancing feature preservation for multi-scale targets and real-time processing in SAR imagery. Its lightweight and high detection accuracy provide a viable engineering-ready solution for real-time remote sensing monitoring across various SAR platforms, demonstrating significant advantages particularly in complex scenes with dense small targets.

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赵喆,李勃,徐文校,李尧.融合多尺度特征的SAR图像目标检测方法[J].电子测量技术,2026,49(4):49-60

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