Opto-Electronic Engineering, Volume. 48, Issue 2, 200270(2021)
A weakly supervised learning method for vehicle identification code detection and recognition
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
Category: Article
Received: Jul. 18, 2020
Accepted: --
Published Online: Sep. 4, 2021
The Author Email: Dong Yin (yindong@ustc.edu.cn)