Optoelectronics Letters, Volume. 13, Issue 6, 476(2017)

Traffic sign recognition based on deep convolutional neural network

Shi-hao YIN... Ji-cai DENG*, Da-wei ZHANG and Jing-yuan DU |Show fewer author(s)
Author Affiliations
  • School of Information Engineering, Zhengzhou University, Zhengzhou 450001, China
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    Traffic sign recognition (TSR) is an important component of automated driving systems. It is a rather challenging task to design a high-performance classifier for the TSR system. In this paper, we propose a new method for TSR system based on deep convolutional neural network. In order to enhance the expression of the network, a novel structure (dubbed block-layer below) which combines network-in-network and residual connection is designed. Our network has 10 layers with parameters (block-layer seen as a single layer): the first seven are alternate convolutional layers and block-layers, and the remaining three are fully-connected layers. We train our TSR network on the German traffic sign recognition benchmark (GTSRB) dataset. To reduce overfitting, we perform data augmentation on the training images and employ a regularization method named “dropout”. The activation function we employ in our network adopts scaled exponential linear units (SELUs), which can induce selfnormalizing properties. To speed up the training, we use an efficient GPU to accelerate the convolutional operation. On the test dataset of GTSRB, we achieve the accuracy rate of 99.67%, exceeding the state-of-the-art results.

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    YIN Shi-hao, DENG Ji-cai, ZHANG Da-wei, DU Jing-yuan. Traffic sign recognition based on deep convolutional neural network[J]. Optoelectronics Letters, 2017, 13(6): 476

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    Paper Information

    Received: Sep. 12, 2017

    Accepted: --

    Published Online: Sep. 13, 2018

    The Author Email: Ji-cai DENG (iejcdeng@zzu.edu.cn)

    DOI:10.1007/s11801-017-7209-0

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