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1.山西大学计算机与信息技术学院,山西太原 030006
2.苏州大学计算机科学与技术学院,江苏苏州 215006
3.苏州科技大学电子与信息工程学院,江苏苏州 215009
Received:23 March 2025,
Revised:2025-05-22,
Published:25 July 2025
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曹峰, 曾科文, 李德玉, 等. 基于EIMYOLO的高分遥感图像目标检测[J]. 电子学报, 2025, 53(07): 2266-2278.
CAO Feng, ZENG Ke-wen, LI De-yu, et al. Object Detection Based on EIMYOLO for High-Resolution Remote Sensing Images[J]. Acta Electronica Sinica, 2025, 53(07): 2266-2278.
曹峰, 曾科文, 李德玉, 等. 基于EIMYOLO的高分遥感图像目标检测[J]. 电子学报, 2025, 53(07): 2266-2278. DOI:10.12263/DZXB.20250216
CAO Feng, ZENG Ke-wen, LI De-yu, et al. Object Detection Based on EIMYOLO for High-Resolution Remote Sensing Images[J]. Acta Electronica Sinica, 2025, 53(07): 2266-2278. DOI:10.12263/DZXB.20250216
高分遥感图像目标检测是遥感信息智能化处理的研究热点,具有广泛的应用背景和重要的应用价值.相比于自然图像,高分遥感图像目标检测面临目标朝向任意、尺度变化大、背景复杂易受干扰以及排列密集度高等诸多难点.为了进一步提升高分遥感图像目标检测算法的性能,本文从特征融合与特征增强的角度出发,以YOLO11为基准算法提出一种旋转框遥感图像目标检测算法EIMYOLO,并设计了边缘特征增强、多尺度特征增强提取器和多尺度注意力机制动态融合3个即插即用的模块.边缘特征增强模块通过提取目标的边缘特征,提高了算法对旋转目标的方向敏感度以及复杂背景下的特征提取能力.多尺度特征增强提取器和多尺度注意力机制动态融合模块,分别从层内特征增强及层间特征融合角度出发,提高了算法对密集目标和细长目标的检测能力.为了验证本文算法的性能,在公共遥感数据集HRSC2016和DIOR-R上进行了实验.结果表明,所提算法的平均检测准精度分别达到了90.80%和72.40%,优于基准算法和对比算法.
Object detection for high-resolution remote sensing images has become a key research area in intelligent remote sensing information processing
with extensive application scenarios and significant practical value. Unlike natural images
remote sensing images present unique challenges such as arbitrary object orientations
multi-scale variations
complex backgrounds
and densely arranged targets. To further improve the performance of high-resolution remote sensing image object detection
this paper proposes EIMYOLO
a novel rotated object detection algorithm based on YOLOv11
which incorporates innovative feature fusion and enhancement strategies. The proposed method integrates three plug-and-play modules designed to enhance feature representation and fusion. First
the Edge Feature Reinforcement Block improves orientation sensitivity and feature discriminability by extracting fine-grained edge information
especially in complex scenes. Second
the Interlayer Feature Enhancement Extractor boosts intralayer feature representation
particularly benefiting the detection of dense and elongated objects. Third
the Multi-Scale Attention Dynamic Fusion enhances inter-layer feature integration through adaptive attention mechanisms. Extensive experiments conducted on two benchmark datasets
HRSC2016 and DIOR-R
demonstrate the effectiveness of our approach
achieving state-of-the-art mean Average Precision (mAP) scores of 90.80% and 72.40%
respectively. These results confirm the superior performance of EIMYOLO over existing baseline and comparative methods.
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