MGD-YOLO:基于YOLOv8的遥感图像目标检测算法
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广西大学计算机与电子信息学院 南宁 530004

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TN911.73

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广西重点研发项目(桂科AB24010033)资助


MGD-YOLO: Target detection algorithm for remote sensing images based on YOLOv8
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School of Computer and Electronic Information, Guangxi University,Nanning 530004, China

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    摘要:

    针对遥感图像中目标尺度差异大、类别多样且分布不均导致的检测不精准、漏检和误检问题,提出一种基于YOLOv8n改进的遥感图像目标检测算法MGD-YOLO。首先,提出了多尺度边缘高斯注意力模块MEGA,其结合高斯平滑、Scharr 边缘算子与通道注意力机制,有效抑制遥感图像噪声干扰,强化目标轮廓特征表达。其次,设计出MDPConv结构,通过动态加权融合机制和深度可分离卷积相互结合,改善传统卷积感受野固定问题,增强模型对多尺度目标的感知能力。最后,检测头部分引入DLGA结构,动态分配注意力分支权重,并采用MLP融合策略,提升局部细节与全局语义信息的融合效果,从而提高检测性能。实验表明,MGD-YOLO在DIOR、DOTA和NWPU VHR-10 数据集上与YOLOv8n相比,mAP@0.5分别提升了1.6%、2.7%、1%,验证了其在遥感图像目标检测中的有效性和良好的鲁棒性。

    Abstract:

    To address the issues of imprecise target localization, missed detections, and false alarms caused by significant differences in target scales, diverse categories, and uneven target distribution in remote sensing images, this paper proposes an improved algorithm based on YOLOv8n, named MGD-YOLO. Firstly, the multi-scale edge-gaussian attention module (MEGA) is introduced. By integrating Gaussian smoothing, the Scharr edge operator, and a channel attention mechanism, MEGA effectively suppresses noise and enhances the feature representation of target contours in complex backgrounds. Secondly, the MDPConv structure is designed, which combines a dynamic weighted fusion mechanism with depthwise separable convolutions to overcome the fixed receptive field problem of traditional convolutions and improve the model′s ability to detect targets of varying scales. Lastly, the DLGA structure is introduced in the detection head. By dynamically allocating weights to multiple attention branches and utilizing an MLP fusion strategy, DLGA significantly improves the integration of local and global features, thereby boosting detection performance. Experimental results demonstrate that MGD-YOLO achieves a 1.6%, 2.7% and 1% increase in mAP@0.5 on the DIOR, DOTA and NWPU VHR-10 datasets, respectively, compared to YOLOv8n, thus validating its effectiveness for remote sensing image target detection tasks.

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李菲,陈鹏宇,梁钰墁,郑鑫宇,王烈. MGD-YOLO:基于YOLOv8的遥感图像目标检测算法[J].电子测量技术,2026,49(4):148-157

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  • 在线发布日期: 2026-04-16
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