Character Segmentation and Recognition of Variable-Length License Plates Using ROI Detection and Broad Learning System

Bingshu Wang, Hongli Xiao, Jiangbin Zheng, Dengxiu Yu, C. L.Philip Chen

Research output: Contribution to journalArticlepeer-review

6 Scopus citations

Abstract

Variable-length license plate segmentation and recognition has always been a challenging barrier in the application of intelligent transportation systems. Previous approaches mainly concern fixed-length license plates, lacking adaptability for variable-length license plates. Although objection detection methods can be used to address the issue, they face a series of difficulties: cross class problem, missing detections, and recognition errors between letters and digits. To solve these problems, we propose a machine learning method that regards each character as a region of interest. It covers three parts. Firstly, we explore a transfer learning algorithm based on Faster-RCNN with InceptionV2 structure to generate candidate character regions. Secondly, a strategy of cross-class removal of character is proposed to reject the overlapped results. A mechanism of template matching and position predicting is designed to eliminate missing detections. Moreover, a twofold broad learning system is designed to identify letters and digits separately. Experiments performed on Macau license plates demonstrate that our method achieves an average 99.68% of segmentation accuracy and an average 99.19% of recognition rate, outperforming some conventional and deep learning approaches. The adaptability is expected to transfer the developed algorithm to other countries or regions.

Original languageEnglish
Article number1560
JournalRemote Sensing
Volume14
Issue number7
DOIs
StatePublished - 1 Apr 2022

Keywords

  • broad learning system
  • character segmentation
  • cross class removal
  • deep transfer learning
  • ROI detection

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