Abstract

The automatic recognition of traffic signs is essential to autonomous driving, assisted driving, and driving safety. Currently, convolutional neural network (CNN) is the most popular deep learning algorithm in traffic sign recognition. However, the CNN cannot capture the poses, perspectives, and directions of the image, nor accurately recognize traffic signs from different perspectives. To solve the problem, the authors presented an automatic recognition algorithm for traffic signs based on visual inspection. For the accuracy of visual inspection, a region of interest (ROI) extraction method was designed through content analysis and key information recognition. Besides, a Histogram of Oriented Gradients (HOG) method was developed for image detection to prevent projection distortion. Furthermore, a traffic sign recognition learning architecture was created based on CapsNet, which relies on neurons to represent target parameters like dynamic routing, path pose and direction, and effectively capture the traffic sign information from different angles or directions. Finally, our model was compared with several baseline methods through experiments on LISA (Laboratory for Intelligent and Safe Automobiles) traffic sign dataset. The model performance was measured by mean average precision (MAP), time, memory, floating point operations per second (FLOPS), and parameter number. The results show that our model consumed shorter time yet better recognition performance than baseline methods, including CNN, support vector machine (SVM), and region-based fully convolutional network (R-FCN) ResNet 101.

Highlights

  • Traffic sign recognition is a research hotspot in the application of visual navigation and computer vision in intelligent driving [1], [2]

  • Li [16] relied on edge information to recognize traffic signs that are difficult to detect in the driving environment: Based on the shape features of scale-invariant edge turning angles, the nonparametric shape detector was used to detect circles, triangles, and rectangles in the image; more than 95% of all traffic signs were covered by this detector

  • This study presents an automatic road sign recognition algorithm based on visual detection

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Summary

Introduction

Traffic sign recognition is a research hotspot in the application of visual navigation and computer vision in intelligent driving [1], [2]. The recognition of traffic signs needs to realize various goals with a high accuracy through complex implementation methods. A minor classification error of traffic signs will bring disastrous consequences. Most targets, including traffic lights, routes, special vehicles, and the gestures of traffic police, are recognized by cameras or vehicle-to-everything (V2X) communication. Radar is intrinsically unable to identify signals like speed limit and stop sign. Cameras are installed on the dashboard of many autonomous vehicles and

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