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Main Authors: Hong, Haoqin, Zhou, Yue, Shu, Xiangyu, Hu, Xiaofang
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2309.06902
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author Hong, Haoqin
Zhou, Yue
Shu, Xiangyu
Hu, Xiaofang
author_facet Hong, Haoqin
Zhou, Yue
Shu, Xiangyu
Hu, Xiaofang
contents Traffic sign detection is an important research direction in intelligent driving. Unfortunately, existing methods often overlook extreme conditions such as fog, rain, and motion blur. Moreover, the end-to-end training strategy for image denoising and object detection models fails to utilize inter-model information effectively. To address these issues, we propose CCSPNet, an efficient feature extraction module based on Contextual Transformer and CNN, capable of effectively utilizing the static and dynamic features of images, achieving faster inference speed and providing stronger feature enhancement capabilities. Furthermore, we establish the correlation between object detection and image denoising tasks and propose a joint training model, CCSPNet-Joint, to improve data efficiency and generalization. Finally, to validate our approach, we create the CCTSDB-AUG dataset for traffic sign detection in extreme scenarios. Extensive experiments have shown that CCSPNet achieves state-of-the-art performance in traffic sign detection under extreme conditions. Compared to end-to-end methods, CCSPNet-Joint achieves a 5.32% improvement in precision and an 18.09% improvement in mAP@.5.
format Preprint
id arxiv_https___arxiv_org_abs_2309_06902
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle CCSPNet-Joint: Efficient Joint Training Method for Traffic Sign Detection Under Extreme Conditions
Hong, Haoqin
Zhou, Yue
Shu, Xiangyu
Hu, Xiaofang
Computer Vision and Pattern Recognition
Traffic sign detection is an important research direction in intelligent driving. Unfortunately, existing methods often overlook extreme conditions such as fog, rain, and motion blur. Moreover, the end-to-end training strategy for image denoising and object detection models fails to utilize inter-model information effectively. To address these issues, we propose CCSPNet, an efficient feature extraction module based on Contextual Transformer and CNN, capable of effectively utilizing the static and dynamic features of images, achieving faster inference speed and providing stronger feature enhancement capabilities. Furthermore, we establish the correlation between object detection and image denoising tasks and propose a joint training model, CCSPNet-Joint, to improve data efficiency and generalization. Finally, to validate our approach, we create the CCTSDB-AUG dataset for traffic sign detection in extreme scenarios. Extensive experiments have shown that CCSPNet achieves state-of-the-art performance in traffic sign detection under extreme conditions. Compared to end-to-end methods, CCSPNet-Joint achieves a 5.32% improvement in precision and an 18.09% improvement in mAP@.5.
title CCSPNet-Joint: Efficient Joint Training Method for Traffic Sign Detection Under Extreme Conditions
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2309.06902