1. 中兵智能创新研究院有限公司, 北京 100072
2. 群体协同与自主实验室, 北京 100072
* 邮箱: tristantsq@gmail.com
收稿:2025-07-01,
网络首发:2026-02-03,
纸质出版:2025
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苏向阳, 汪洋, 谭森起, 等. PCA-YOLO11:全域复杂环境的轻量目标检测[J]. 兵工学报, 2025,46(S2):250584.
Xiangyang SU, Yang WANG, Senqi TAN, et al. PCA-YOLO11:Lightweight Object Detection in Multi-altitude Complex Environments[J]. Acta Armamentarii, 2025, 46(S2): 250584.
苏向阳, 汪洋, 谭森起, 等. PCA-YOLO11:全域复杂环境的轻量目标检测[J]. 兵工学报, 2025,46(S2):250584. DOI: 10.12382/bgxb.2025.0584.
Xiangyang SU, Yang WANG, Senqi TAN, et al. PCA-YOLO11:Lightweight Object Detection in Multi-altitude Complex Environments[J]. Acta Armamentarii, 2025, 46(S2): 250584. DOI: 10.12382/bgxb.2025.0584.
面向复杂环境中无人机对目标的实时精准检测需求
提出一种全域复杂环境的轻量化检测模型PCA-YOLO11(Pinwheel-shaped Context Aggregation YOLO11)。构建涵盖多高度、多视角及复杂背景干扰的全域视角特种车辆数据集
包含1311张图像与2729个特种车辆目标;设计融合风车形卷积与全局上下文聚合的特征增强模块
通过局部细节特征感知强化小目标特征提取与抗遮挡能力
并基于长程依赖建模同步增强抗背景干扰鲁棒性;引入尺度感知的动态损失函数
优化多尺度目标的定位精度;采用约束训练导向的层级通道剪枝策略
实现精度可控的轻量化。实验结果表明:PCA-YOLO11在自制数据集上的mAP@0.5-0.95达79.17%
较基础模型提高3.01%;轻量化版本参数量降低14.4%
精度损失仅0.45%
推理速度达128.8FPS
满足实时精准检测需求。
To address the requirements for the real-time accurate detection of targets by UAVs
this paper proposes pinwheel-shaped context aggregation (PCA)-YOLO11 (PCA-YOLO11) model
a lightweight target detection model in multi-altitude complex environments.A comprehensive special vehicle dataset spanning the multi-altitude views with complex background interference is constructed
comprising 1 311 images and 2 729 targets.A feature enhancement module pinwheel-shaped context aggregation convolution integrating pinwheel-shaped convolution and global context aggregation is designed
which enhances small-target feature extraction and occlusion resistance through local detail perception while enhancing anti-background-interference robustness via long-range dependency modeling.Subsequently
a scale-based dynamic loss function is introduced to optimize the multi-scale target localization accuracy.Finally
a constrained training-guided hierarchical channel pruning strategy is used to achieve the compression of accuracy-preserving model.Experimental results demonstrate that PCA-YOLO11 achieves 79.17% mAP@0.5-0.95 on the custom dataset
outperforming the baseline model by 3.01%.The lightweight version reduces parameters by 14.4% with accuracy degradation of merely 0.45% and reaches 128.8 FPS inference speed
meeting the real-time accurate detection requirements.
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