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Detection and recognition of road traffic signs in UAV images based on Mask R-CNN |
CHEN Pengdi1( ), HUANG Liang1,2( ), XIA Yan1, YU Xiaona3, GAO Xiaxia1 |
1. Faculty of Land Resource Engineering, Kunming University of Science and Technology, Kunming 650093, China 2. Surveying and Mapping Geo-Informatics Technology Research Center on Plateau Mountains of Yunnan Higher Education, Kunming 650093, China 3. Kunming Vocational and Technical College of Industry, Kunming 650093, China |
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Abstract The detection and recognition of traffic signs is an important part of the intelligent driving navigation system. However, due to the shortcomings of low accuracy, high time complexity and poor robustness, the traditional method cannot meet the current needs of intelligent driving. Therefore, a method for detecting and recognizing road traffic signs of UAV images based on Mask R-CNN is proposed. Firstly, a set of high-quality UAV images road traffic sign data sets are produced. Then, based on the statistics of 200 labeled landmarks features, the region proposal network (RPN) structure anchor boxes width-to-height ratio and initial parameters in Mask R-CNN are improved to make it better applied to UAV images road sign scenes. Finally, the precision-recall (PR) curve and mean average precision (mAP) are used for accuracy evaluation. The experimental results show that the anchor boxes width-to-height ratio is better when the ratio is 1∶1, 1∶2, 1∶3; and that the average detection accuracy obtained by this method is 98.33%, which is higher than the accuracy of Faster R-CNN and YOLOv3, indicating better effectiveness.
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Keywords
UAV images
traffic sign detection
traffic sign recognition
Mask R-CNN
RPN
anchor boxes
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Corresponding Authors:
HUANG Liang
E-mail: cpdhn1058475189@163.com;kmhuangliang@163.com
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Issue Date: 23 December 2020
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