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基于轻量级FPNet的智能网联汽车减速带视觉感知研究

Research on Visual Perception of Speed Bumps for Intelligent Connected Vehicles Based on Lightweight FPNet.

作者信息

Wang Ruochen, Luo Xiaoguo, Ye Qing, Jiang Yu, Liu Wei

机构信息

School of Automotive and Traffic Engineering, Jiangsu University, Zhenjiang 212013, China.

Automotive Engineering Research Institute, Jiangsu University, Zhenjiang 212013, China.

出版信息

Sensors (Basel). 2024 Mar 27;24(7):2130. doi: 10.3390/s24072130.

Abstract

In the field of intelligent connected vehicles, the precise and real-time identification of speed bumps is critically important for the safety of autonomous driving. To address the issue that existing visual perception algorithms struggle to simultaneously maintain identification accuracy and real-time performance amidst image distortion and complex environmental conditions, this study proposes an enhanced lightweight neural network framework, YOLOv5-FPNet. This framework strengthens perception capabilities in two key phases: feature extraction and loss constraint. Firstly, FPNet, based on FasterNet and Dynamic Snake Convolution, is developed to adaptively extract structural features of distorted speed bumps with accuracy. Subsequently, the C3-SFC module is proposed to augment the adaptability of the neck and head components to distorted features. Furthermore, the SimAM attention mechanism is embedded within the backbone to enhance the ability of key feature extraction. Finally, an adaptive loss function, Inner-WiseIoU, based on a dynamic non-monotonic focusing mechanism, is designed to improve the generalization and fitting ability of bounding boxes. Experimental evaluations on a custom speed bumps dataset demonstrate the superior performance of FPNet, with significant improvements in key metrics such as the mAP, mAP50_95, and FPS by 38.76%, 143.15%, and 51.23%, respectively, compared to conventional lightweight neural networks. Ablation studies confirm the effectiveness of the proposed improvements. This research provides a fast and accurate speed bump detection solution for autonomous vehicles, offering theoretical insights for obstacle recognition in intelligent vehicle systems.

摘要

在智能网联汽车领域,精确实时地识别减速带对于自动驾驶安全至关重要。为了解决现有视觉感知算法在图像失真和复杂环境条件下难以同时保持识别精度和实时性能的问题,本研究提出了一种增强型轻量级神经网络框架YOLOv5-FPNet。该框架在两个关键阶段增强了感知能力:特征提取和损失约束。首先,基于FasterNet和动态蛇形卷积开发了FPNet,以准确地自适应提取失真减速带的结构特征。随后,提出了C3-SFC模块,以增强颈部和头部组件对失真特征的适应性。此外,在主干中嵌入了SimAM注意力机制,以增强关键特征提取能力。最后,基于动态非单调聚焦机制设计了一种自适应损失函数Inner-WiseIoU,以提高边界框的泛化能力和拟合能力。在自定义减速带数据集上的实验评估证明了FPNet的卓越性能,与传统轻量级神经网络相比,mAP、mAP50_95和FPS等关键指标分别显著提高了38.76%、143.15%和51.23%。消融研究证实了所提出改进措施的有效性。本研究为自动驾驶车辆提供了一种快速准确的减速带检测解决方案,为智能车辆系统中的障碍物识别提供了理论见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8cce/11014273/b7c66cc0fa04/sensors-24-02130-g001.jpg

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