基于DOLN-YOLO的复杂环境下的条码检测算法
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河南科技大学机电工程学院 洛阳 471003

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TP391.7;TN98

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国家重点基础研究发展计划(J2019-VII-0017-0159)项目资助


Barcode detection algorithm based on DOLN-YOLO in complex environments
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School of Mechanical Engineering, Henan University of Science and Technology,Luoyang 471003,China

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    摘要:

    针对现有目标检测模型在复杂环境下检测条形码时易受干扰导致精度不足,以及模型复杂度高难以部署于移动端低算力设备的问题,本研究提出了一种基于YOLOv8的轻量级高精度检测算法DOLN-YOLO。首先,引入以DWCOnv重构的DW-HGNetV2作为主干网络,在增强多尺度特征提取能力的同时显著降低计算复杂度;其次,构建OD-C3Ghost模块替换C2f模块,增强了对条码复杂形变的动态感知能力,并进一步消除计算冗余;然后,设计了轻量级共享细节增强检测头LSDEDH,利用DEConv的梯度-强度双路协同机制提升模型的特征泛化能力,并采用异构卷积共享策略降低资源损耗;最后,提出了复合损失函数NWD-PIoUV2,联合归一化Wasserstein距离与动态聚焦PIoUV2损失,缓解微小定位偏差的优化难题并加快收敛速度。实验结果表明,相比于基准模型,DOLN-YOLO的mAP@0.5提升了0.92%,mAP@0.5:0.95提升了4.57%,同时参数量和计算量分别降低了58.8%和48.6%,证明了算法在检测复杂环境下的条码的优越性。DOLN-YOLO 为物流、医疗、零售等场景提供了兼具高鲁棒检测能力与高效移动部署的解决方案。

    Abstract:

    To address the issues of existing object detection models being prone to interference and resulting in insufficient accuracy when detecting barcodes in complex environments, as well as the high model complexity making deployment on low-computing-power mobile devices challenging, this study proposes a lightweight, high-precision detection algorithm called DOLN-YOLO based on YOLOv8. First, the DW-HGNetV2 architecture, reconstructed using deeply separable convolutions, is introduced as the backbone network, which enhances multiscale feature extraction capabilities while significantly reducing computational complexity. Second, the OD-C3Ghost module is constructed to replace the C2f module, enhancing dynamic perception capabilities for complex barcode deformations and further eliminating computational redundancy. Third, a lightweight shared detail enhancement detection head is designed, utilizing the gradient-strength dual-channel coordination mechanism of DEConv to enhance the model′s feature generalization capabilities, and adopts a heterogeneous convolution sharing strategy to reduce resource consumption; finally, a composite loss function NWD-PIoUV2 is proposed, combining normalized Wasserstein distance with dynamic focus PIoUV2 loss, to mitigate the optimization challenge of minor localization deviations and accelerate convergence speed. Experimental results demonstrate that, compared to the baseline model, DOLN-YOLO achieves a 0.92% improvement in mAP@0.5 and a 4.57% increase in mAP@0.5:0.95, while reducing parameters and computational costs by 58.8% and 48.6% respectively. This validates the algorithm′s superiority in detecting barcodes under complex environments. DOLN-YOLO provides a solution featuring both robust detection capability and efficient mobile deployment for logistics, healthcare, retail, and other application scenarios.

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何奥辉,张丰收,庄高帅,段庆阳,冯宝阳.基于DOLN-YOLO的复杂环境下的条码检测算法[J].电子测量技术,2026,49(4):136-147

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  • 在线发布日期: 2026-04-16
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