five

Detection accuracy of different models.

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NIAID Data Ecosystem2026-05-02 收录
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https://figshare.com/articles/dataset/Detection_accuracy_of_different_models_/29534892
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To solve the problem of reduced positioning accuracy caused by changes in scale, background and occlusion in port and dock video images, this research proposes an enhanced model combining YOLOv5s-DeepSORT, integrating target load recognition and trajectory tracking to improve adaptability to dock environments. The findings indicate that incorporating multi-scale convolution into YOLOv5s improved the robustness of multi-scale object detection, resulting in a 0.4% increase in mean Average Precision (mAP). Furthermore, the integration of an efficient pyramid segmentation attention (EPSA) network enhanced the accuracy of multi-scale feature fusion representation. The model’s mAP@0.5:0.95 increased by 1.2% following the introduction of EPSA. Finally, the original classification loss function was enhanced using a distributed sorting loss approach to mitigate the imbalance among loaded objects and the influence of background variations in the dock image sequence. This optimization led to a 3.1% improvement in multi-target tracking accuracy (MOTA). Experimental results on self-constructed datasets demonstrated an average accuracy of 90.9% and a detection accuracy of 92.2%, offering a valuable reference for target recognition and tracking in port and dock environments.

针对港口码头视频图像中因尺度变化、背景干扰与目标遮挡导致的定位精度下降问题,本研究提出一种融合YOLOv5s-DeepSORT的增强型模型,整合目标载荷识别与轨迹跟踪模块,以提升对码头场景的环境适应性。研究结果表明,在YOLOv5s中融入多尺度卷积可提升多尺度目标检测的鲁棒性,使平均精度均值(mean Average Precision,mAP)提升0.4%。此外,引入高效金字塔分割注意力(efficient pyramid segmentation attention,EPSA)网络,可提升多尺度特征融合表征的精度;引入EPSA后,模型的mAP@0.5:0.95指标提升1.2%。最后,本研究采用分布式排序损失方法优化原始分类损失函数,以缓解码头图像序列中载荷目标类别失衡问题,并削弱背景变化带来的负面影响,该优化使多目标跟踪准确率(multi-target tracking accuracy,MOTA)提升3.1%。在自研数据集上的实验结果显示,模型平均准确率达90.9%,检测准确率达92.2%,可为港口码头场景下的目标识别与跟踪任务提供重要参考依据。
创建时间:
2025-07-10
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