交通运输系统工程与信息 ›› 2026, Vol. 26 ›› Issue (3): 235-246.DOI: 10.16097/j.cnki.1009-6744.2026.03.022

• 智能交通系统与信息技术 • 上一篇    下一篇

复杂交通场景基于边缘特征增强的长队列排队检测

曹倩霞1a ,陈世文1a ,吕松涛*1a,1b ,王大为2   

  1. 1. 长沙理工大学,a.交通学院,b.公路养护技术国家工程研究中心,长沙410114; 2. 哈尔滨工业大学,交通科学与工程学院,哈尔滨150090
  • 收稿日期:2025-12-31 修回日期:2026-02-16 接受日期:2026-04-30 出版日期:2026-06-25 发布日期:2026-06-23
  • 作者简介:曹倩霞(1982—),女,湖南益阳人,副教授,博士。
  • 基金资助:
    国家重点研发计划(2023YFB2603500);湖南省研究生科研创新项目(CX20240763)。

Long Queue Length Detection Based on Enhanced Edge Features for Complex Traffic Scenarios

CAO Qianxia1a, CHEN Shiwen1a, LV Songtao*1a,1b, WANG Dawei2   

  1. 1a. School of Transportation, 1b. National Engineering Research Center of Highway Maintenance Technology, Changsha University of Science & Technology, Changsha 410114, China; 2. School of Transportation Science and Engineering, Harbin Institute of Technology, Harbin 150090, China
  • Received:2025-12-31 Revised:2026-02-16 Accepted:2026-04-30 Online:2026-06-25 Published:2026-06-23
  • Supported by:
    National Key R&D Program of China(2023YFB2603500);Hunan Provincial Postgraduate Scientific Research Innovation Project (CX20240763)。

摘要: 针对监控视角下长队列排队检测因密集交通遮挡、远端小目标聚集和监控近远端空间尺度不一致所引发的误检、漏检,以及排队状态误判等问题,本文提出一种复杂交通场景下基于边缘特征增强的长队列排队检测方法。在目标检测模块中,设计一个边缘特征增强金字塔(EFE-Pyramid),构建边缘特征卷积(EFConv)以显式提取浅层边缘响应特征,并设计深浅层特征融合机制以增强边缘特征,提升模型密集交通遮挡与远处小目标检测的辨识能力与检测精度。在此基础上,使用任务对齐检测头以保障实时性能。在排队长度提取中,提出自适应透视感知方法,实现近远端目标表征的统一对齐,提升排队长度估计的稳定性与泛化能力。实验结果表明,在公开数据集和自制复杂场景交通数据集中,本文算法以较小的模型复杂度,提升了复杂交通场景下的识别能力,检测精度较基线模型分别提升2.4个百分点和4.8个百分点,且优于现有先进方法;同时在排队长度提取实验中,实现平均绝对百分比误差4.8%,充分验证了复杂交通场景下长队列排队检测的有效性和实用性。

关键词: 智能交通, 排队长度提取, 目标检测, 边缘特征增强, 小目标检测, 透视感知

Abstract: To address issues such as false detections, missed detections, and misjudgments of queue status in long-queue detection under surveillance views—caused by occlusions from dense traffic, aggregation of small distant targets, and inconsistent spatial scales between near and far regions in surveillance scenes—this paper proposes an edge-feature-enhanced long-queue detection method for complex traffic scenarios. In the object detection module, a novel Edge Feature Enhancement Pyramid (EFE-Pyramid) is designed, which incorporates an Edge Feature Convolution (EFConv) to explicitly extract shallow-layer edge response features, and employs a deep-shallow feature fusion mechanism to enhance edge features, thereby improving the model's discriminability and detection accuracy for occluded objects in dense traffic and small distant targets. On this basis, a task-aligned detection head is used to ensure real-time performance. For queue length estimation, an adaptive perspective-aware method is proposed to achieve unified alignment of target representations across near and far regions, enhancing the stability and generalization capability of queue length estimation. Experimental results demonstrate that, on both public datasets and a self-collected complex-traffic scenario dataset, the proposed algorithm achieves higher recognition performance in complex traffic environments with relatively low model complexity, improving detection accuracy by 2.4 and 4.8 percentage points over the baseline model, respectively, and outperforming current state-of-the-art methods. Furthermore, in queue length estimation experiments, it achieves an average absolute percentage error of 4.8%, fully validating the effectiveness and practicality of the proposed approach for long-queue detection in complex traffic scenarios.

Key words: intelligent transportation, queue length estimation, object detection, edge feature enhancement, small object detection, perspective perception

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