Vehicle and pedestrian detection method based on improved YOLOX in foggy environment

Li-zong Lin, Zhaohui Liu, Shiji Zhao, Jinzhao Zhang
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Abstract

Most of the current vision sensor-based target detection is suitable for good weather conditions. Adverse weather conditions, especially foggy environments, significantly reduce visibility, which seriously affects the target detection performance. To improve driving safety in foggy environments, this paper proposes an improved YOLOX-based vehicle and pedestrian detection method in foggy environments. The method is based on the advanced YOLOX network model and introduces an attention mechanism in the feature extraction network to enhance the network's extraction of target features in foggy images. Some images in the training dataset are fogged to supplement the target-specific features in foggy environments and improve the robustness of the target detection network in foggy environments. The idea of migration learning is used in the training process to save training time and optimize the training effect. The experimental results show that the target detection method proposed in this paper has significantly improved the detection performance of vehicles and pedestrians in the foggy environment, with an 11.35% improvement in mAP, and the detection effect is better than the GCANet image defogging method. The effectiveness of the method improvement is proved.
雾天环境下基于改进YOLOX的车辆和行人检测方法
目前大多数基于视觉传感器的目标检测都适用于良好的天气条件。恶劣的天气条件,尤其是多雾的环境,会显著降低能见度,严重影响目标探测性能。为了提高雾天环境下的行车安全性,本文提出了一种改进的基于yolox的雾天环境下车辆和行人检测方法。该方法基于先进的YOLOX网络模型,在特征提取网络中引入了注意机制,增强了网络对雾天图像中目标特征的提取能力。对训练数据集中的部分图像进行雾化处理,以补充雾天环境下的目标特异性特征,提高雾天环境下目标检测网络的鲁棒性。在训练过程中采用迁移学习的思想,节省了训练时间,优化了训练效果。实验结果表明,本文提出的目标检测方法显著提高了雾天环境下车辆和行人的检测性能,mAP提高了11.35%,检测效果优于GCANet图像去雾方法。验证了改进方法的有效性。
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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