Yu Sun,Chong Zhang,Xian Li,Xuyang Jing,Hui Kong,Qing-Guo Wang
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引用次数: 0
Abstract
Accurate and fast detection of traffic signs is critical for autonomous driving, particularly in complex environments with diverse sign scales and varying detection distances. Existing approaches, incorporating attention modules or modifying detection heads, frequently encounter high rates of false positives and omissions due to the increased sampling depth. To address these limitations, we propose MDSF-you only look once (YOLO), a novel detection framework that integrates multiscale sequence fusion (MSF) for synergistic feature integration across granularities, enhancing the precision of both localization and semantic information fusion. Additionally, our dilated-wise residual (DWR) module leverages dilated convolutions and channel-wise reparameterization to improve fine-grained feature extraction. The architecture further introduces a $P_{2}$ detection head for shallow features and fully decouples all detection heads, optimizing target localization and category identification. Extensive experiments on the TT100K and CCTSDB2021 datasets demonstrate the superiority of MDSF-YOLO over benchmark models, including YOLOv11s, with significant improvements in mAP by 8.8% and 2.4% on respective datasets while substantially reducing false positives and leakage rate. Besides, the marked improvement of MDSF-YOLO on the VisDrone2019 dataset verifies its enhanced capability to address drone-based object detection. These advances underscore the efficiency and robustness of the proposed model, providing a promising solution for autonomous driving and similar object detection scenarios.
准确、快速地检测交通标志对于自动驾驶至关重要,特别是在具有不同标志尺度和不同检测距离的复杂环境中。现有的方法,包括注意模块或修改检测头,由于增加了采样深度,经常遇到高误报率和遗漏。为了解决这些限制,我们提出了MDSF-you only look once (YOLO),这是一种集成了多尺度序列融合(MSF)的新型检测框架,用于跨粒度的协同特征集成,提高了定位和语义信息融合的精度。此外,我们的扩展残差(DWR)模块利用扩展卷积和通道重新参数化来改进细粒度特征提取。该体系结构进一步引入了用于浅层特征的$P_{2}$检测头,并完全解耦了所有检测头,优化了目标定位和类别识别。在TT100K和CCTSDB2021数据集上进行的大量实验表明,mddf - yolo优于基准模型,包括yolov11,在各自的数据集上mAP显着提高了8.8%和2.4%,同时大大降低了误报和泄漏率。此外,MDSF-YOLO在VisDrone2019数据集上的显著改进验证了其解决基于无人机的目标检测的能力增强。这些进步强调了所提出模型的效率和鲁棒性,为自动驾驶和类似的目标检测场景提供了一个有前途的解决方案。
期刊介绍:
The focus of IEEE Transactions on Neural Networks and Learning Systems is to present scholarly articles discussing the theory, design, and applications of neural networks as well as other learning systems. The journal primarily highlights technical and scientific research in this domain.