Opto-Electronic Engineering, Volume. 48, Issue 2, 200270(2021)

A weakly supervised learning method for vehicle identification code detection and recognition

Cao Zhi1,2, Shang Lidan1,2, and Yin Dong1,2、*
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  • 1[in Chinese]
  • 2[in Chinese]
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    The vehicle identification code (VIN) is of great significance to the annual vehicle inspection. However, due to the lack of character-level annotations, it is impossible to perform the single-character style check on the VIN. To solve this problem, a single-character detection and recognition framework for VIN is designed and a weakly supervised learning algorithm without character-level annotation is proposed for this framework. Firstly, the feature information of each level of VGG16-BN is fused to obtain a fusion feature map with single-character position information and semantic information. Secondly, a network structure for both the character detection branch and the character recognition branch is designed to extract the position and semantic information of a single character in the fusion feature map. Finally, using the text length and single-character category information, the proposed framework is weakly supervised on the vehicle identification code data set without character-level annotations. On the VIN test set, experimental results show that the proposed method realizes the Hmean score of 0.964 and a single-character detection and recognition accuracy rate of 95.7%, showing high practicability.

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    Cao Zhi, Shang Lidan, Yin Dong. A weakly supervised learning method for vehicle identification code detection and recognition[J]. Opto-Electronic Engineering, 2021, 48(2): 200270

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    Paper Information

    Category: Article

    Received: Jul. 18, 2020

    Accepted: --

    Published Online: Sep. 4, 2021

    The Author Email: Dong Yin (yindong@ustc.edu.cn)

    DOI:10.12086/oee.2021.200270

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