Opto-Electronic Engineering, Volume. 48, Issue 2, 200270(2021)
A weakly supervised learning method for vehicle identification code detection and recognition
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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)