Remote Sensing (Mar 2022)

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

DOI
https://doi.org/10.3390/rs14071560
Journal volume & issue
Vol. 14, no. 7
p. 1560

Abstract

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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.

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