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计算机科学与技术汇刊

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ISSN Print:2327-090X

ISSN Online:2327-0918

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Paper Infomation

CNN-based Traffic Sign Recognition

Full Text(PDF, 1237KB)

Author: Qingkun Huang, Askar Mijiti

Abstract: Background: The rapid development of the automobile industry has led to an increase in the output and holdings of automobiles year by year, which has brought huge challenges to the current traffic management. Method: This paper adopts a traffic sign recognition technology based on deep convolution neural network (CNN): step 1, preprocess the collected traffic sign images through gray processing and near interpolation; step 2, automatically extract image features through the convolutional layer and the pooling layer; step 3, recognize traffic signs through the fully connected layer and the Dropout technology. Purpose: Artificial intelligence technology is applied to traffic management to better realize intelligent traffic assisted driving. Results: This paper adopts an Adam optimization algorithm for calculating the loss value. The average accuracy of the experimental classification is 98.87%. Compared with the traditional gradient descent algorithm, the experimental model can quickly converge in a few iteration cycles.

Keywords: Traffic Sign Recognition, Convolution Neural Network (CNN), Adam Algorithm

References:

[1] Liu H, Ran B. Vision-Based Stop Sign Detection and Recognition System for Intelligent Vehicles[J]. Transportation Research Record Journal of the Transportation Research Board, 2001, 1748:161-166.

[2] Tian Qiuhong, Liu Chengxia, Du Xiao. Research on road traffic sign recognition method based on Zernike moments and BP network[J]. Journal of Zhejiang Sci-Tech University, 2012, 29(2): 235-239

[3] D Taubman. High performance scalable image compression with EBCOT[J]. IEEE Transactions on Image Processing, 2000, 9(7): P.1158-1170.

[4] Liao, Simon, X, et al. On the Accuracy of Zernike Moments for Image Analysis[J]. IEEE Transactions on Pattern Analysis & Machine Intelligence, 1998.

[5] Bahlmann C, Zhu Y, Ramesh V, et al. A system for traffic sign detection, tracking, and recognition using color, shape, and motion information[C]// Intelligent Vehicles Symposium, 2005. Proceedings. IEEE. IEEE, 2005.

[6] Asakura T, Aoyagi Y, Hirose O K. Real-time recognition of road traffic sign in moving scene image using new image filter[C]// Sice Sice Conference International Session Papers. IEEE Xplore, 2000.

[7] Wga X, Pb L, Sb D, et al. Recognition of traffic signs based on their colour and shape features extracted using human vision models[J]. Journal of Visual Communication and Image Representation, 2006, 17(4):675-685.

[8] Chen H L, Chen M S, Hu S H. An Efficient Embedded System for the Detection and Recognition of Speed-Limit Signs[M]. Springer Netherlands, 2014.

[9] Ahmed N, Rabbi S, Rahman M T, et al. Traffic Sign Detection and Recognition Model Using Support Vector Machine and Histogram of Oriented Gradient[J]. International Journal of Information Technology and Computer Science, 2021, 13(3):61-73.

[10] Arunabala C, Jwalitha P, Nuthalapati S. TEXT SENTIMENT ANALYSIS BASED ON CNNS AND SVM[J]. International Journal of Research -GRANTHAALAYAH, 2019, 7(6):77-83.

[11] Lecun Y, Bottou L. Gradient-based learning applied to document recognition[J]. Proceedings of the IEEE, 1998, 86(11):2278-2324.

[12] Krizhevsky A, et al. ImageNet Classification with Deep Convolutional Neural Networks[J]. Advances in neural information processing systems, 2012, 25(2).

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