YOLO-ADual: A Lightweight Traffic Sign Detection Model for a Mobile Driving System

IF 2.6 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Simin Fang, Chengming Chen, Zhijian Li, Meng Zhou, Renjie Wei
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引用次数: 0

Abstract

Traffic sign detection plays a pivotal role in autonomous driving systems. The intricacy of the detection model necessitates high-performance hardware. Real-world traffic environments exhibit considerable variability and diversity, posing challenges for effective feature extraction by the model. Therefore, it is imperative to develop a detection model that is not only highly accurate but also lightweight. In this paper, we proposed YOLO-ADual, a novel lightweight model. Our method leverages the C3Dual and Adown lightweight modules as replacements for CPS and CBL modules in YOLOv5. The Adown module effectively mitigates feature loss during downsampling while reducing computational costs. Meanwhile, C3Dual optimizes the processing power for kernel feature extraction, enhancing computation efficiency while preserving network depth and feature extraction capability. Furthermore, the inclusion of the CBAM module enables the network to focus on salient information within the image, thus augmenting its feature representation capability. Our proposed algorithm achieves a mAP@0.5 of 70.1% while significantly reducing the number of parameters and computational requirements to 51.83% and 64.73% of the original model, respectively. Compared to various lightweight models, our approach demonstrates competitive performance in terms of both computational efficiency and accuracy.
YOLO-ADual:移动驾驶系统的轻量级交通标志检测模型
交通标志检测在自动驾驶系统中起着举足轻重的作用。检测模型的复杂性需要高性能的硬件。现实世界的交通环境呈现出相当大的可变性和多样性,给模型的有效特征提取带来了挑战。因此,当务之急是开发一种既高度准确又轻便的检测模型。在本文中,我们提出了一种新型轻量级模型 YOLO-ADual。我们的方法利用 C3Dual 和 Adown 轻量级模块来替代 YOLOv5 中的 CPS 和 CBL 模块。Adown 模块可有效减少下采样过程中的特征损失,同时降低计算成本。同时,C3Dual 优化了内核特征提取的处理能力,在保持网络深度和特征提取能力的同时提高了计算效率。此外,CBAM 模块的加入还能使网络关注图像中的突出信息,从而增强其特征表示能力。我们提出的算法实现了 70.1% 的 mAP@0.5,同时大幅减少了参数数量和计算需求,分别为原始模型的 51.83% 和 64.73%。与各种轻量级模型相比,我们的方法在计算效率和准确性方面都具有竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
World Electric Vehicle Journal
World Electric Vehicle Journal Engineering-Automotive Engineering
CiteScore
4.50
自引率
8.70%
发文量
196
审稿时长
8 weeks
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