基于多尺度特征融合的钢缆小目标缺陷检测算法
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江苏师范大学计算机科学与技术学院 徐州 221116

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TP391.4;TN911.73

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江苏省高等学校自然科学研究面上项目(19KJB520032)、江苏师范大学科研与实践创新项目(2024XKT2613)资助


Small target defect detection algorithm for steel cables based on multi-scale feature fusion
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School of Computer Science and Technology, Jiangsu Normal University,Xuzhou 221116, China

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    摘要:

    钢缆小目标缺陷检测任务中普遍存在检测精度低、漏检率高以及误检频发的问题,尤其在小尺寸较多的检测场景下表现尤为明显。造成该类问题的主要原因包括:传统检测算法特征提取能力不足,缺乏有效的多尺度信息融合机制,以及现有损失函数对小目标不敏感等。针对上述问题,提出一种基于改进型RT-DETR的钢缆缺陷检测方法。该方法在骨干网络中设计BasicStar特征提取模块,提升模型在高维空间中的语义表征能力;同时设计了新型多尺度特征融合策略小目标金字塔网络(SOPN),强化对小目标的关注和表达能力;在损失函数方面,提出焦点增强型Focaler-SIoU损失函数,以提升小目标定位精度与训练收敛稳定性。在钢缆缺陷数据集上的实验结果表明,该改进模型在平均检测精度mAP50上较原始RT-DETR提升了2.1%。综合性能优于现有主流目标检测算法,验证了所提方法在工业场景下对小目标缺陷检测任务的有效性和实用性。

    Abstract:

    In the task of small target defect detection on steel cables, there are common problems such as low detection accuracy, high missed detection rate and frequent false detection, which are particularly obvious in the detection scenario with more small sizes. The main reasons for such problems include: insufficient feature extraction capability of traditional detection algorithms, lack of effective multi-scale information fusion mechanism, and insensitivity of existing loss functions to small targets. To address the above problems, a steel cable defect detection method based on improved RT-DETR is proposed. The BasicStar feature extraction module was designed in the backbone network to improve the semantic representation ability of the model in high-dimensional space; at the same time, a new multi-scale feature fusion strategy small object pyramid network(SOPN) is designed to strengthen the attention and expression ability of small targets; in terms of loss function, a focal enhancement Focaler-SIoU loss function is proposed to improve the positioning accuracy of small targets and the stability of training convergence. Experimental results on the steel cable defect dataset show that the improved model improves the average detection accuracy mAP50 by 2.1% compared with the original RT-DETR. The comprehensive performance is better than the existing mainstream target detection algorithms, which verifies the effectiveness and practicality of the proposed method for small target defect detection tasks in industrial scenarios.

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杨昌昌,张笃振,王斯豪.基于多尺度特征融合的钢缆小目标缺陷检测算法[J].电子测量技术,2026,49(1):146-156

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  • 在线发布日期: 2026-02-11
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