Abstract

Automatic identification for vehicles is an important topic in the field of Intelligent Transportation Systems (ITS), and the vehicle logo is one of the most important characteristics of a vehicle. Therefore, vehicle logo detection and recognition are important research topics. Because of the problems that the area of a vehicle logo is too small to be detected and the dataset is too small to train for complex scenes, considering the speed of recognition and the robustness to complex scenes, we use deep learning methods which are based on data optimization for vehicle logo in complex scenes. We propose three augmentation strategies for vehicle logo data: cross-sliding segmentation method, small frame method, and Gaussian Distribution Segmentation method. For the problem of small sample size, we use cross-sliding segmentation method, which can effectively increase the amount of data without changing the aspect ratio of the original vehicle logo image. To expand the area of the logos in the images, we develop the small frame method which improves the detection results of the small area vehicle logos. In order to enrich the position diversity of vehicle logo in the image, we propose Gaussian Distribution Segmentation method, and the result shows that this method is very effective. The F1 value of our method in the YOLO framework is 0.7765, and the precision is greatly improved to 0.9295. In the Faster R-CNN framework, the F1 value of our method is 0.7799, which is also better than before. The results of experiments show that the above optimization methods can better represent the features of the vehicle logos than the traditional method, and the experimental results have been improved.

Highlights

  • Automatic identification for vehicles is an important topic in the field of Intelligent Transportation Systems (ITS), and the vehicle logo is one of the most important characteristics of a vehicle. erefore, vehicle logo detection and recognition are important research topics

  • Compared with the traditional methods, we propose a data optimization method based on the combination of multiple strategies, which is based on the location diversity and scale diversity of vehicle logo

  • For the image in the first column, the network trained by the original dataset and the dataset enhanced by the traditional method cannot detect the vehicle logo in the image, and the data enhancement method proposed by us can successfully detect the vehicle logo. e second column of each group of images shows the improvement of accuracy of our method

Read more

Summary

Introduction

Automatic identification for vehicles is an important topic in the field of Intelligent Transportation Systems (ITS), and the vehicle logo is one of the most important characteristics of a vehicle. erefore, vehicle logo detection and recognition are important research topics. Because of the problems that the area of a vehicle logo is too small to be detected and the dataset is too small to train for complex scenes, considering the speed of recognition and the robustness to complex scenes, we use deep learning methods which are based on data optimization for vehicle logo in complex scenes. Is Mathematical Problems in Engineering method establishes a corresponding 4D tensor classifier for each class of vehicle logos and achieves the function of classifying each vehicle logo by combining the established classifiers This method locates the vehicle logo by detecting the prior position of the license plate. In order to make the deep neural network better learn and extract the feature representation, we adopt a variety of data optimization methods to make the network perform better in the data of vehicle logos. Compared with the traditional methods, we propose a data optimization method based on the combination of multiple strategies, which is based on the location diversity and scale diversity of vehicle logo

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call