Corpus ID: 18197492

Segmentation-free Vehicle License Plate Recognition using ConvNet-RNN

  title={Segmentation-free Vehicle License Plate Recognition using ConvNet-RNN},
  author={Teik Koon Cheang and Yong Shean Chong and Yong Haur Tay},
  • Teik Koon Cheang, Yong Shean Chong, Yong Haur Tay
  • Published 2017
  • Computer Science
  • ArXiv
  • While vehicle license plate recognition (VLPR) is usually done with a sliding window approach, it can have limited performance on datasets with characters that are of variable width. [...] Key Result Experimental results comparing the ConvNet-RNN architecture to a sliding window-based approach shows that the ConvNet-RNN architecture performs significantly better.Expand Abstract
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