A Broad Survey on Performance Analysis of Number Plate Recognition from Stationary Images and Video Sequences

  • Abstract
  • Keywords
  • References
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  • Abstract

    Licensed Number plate recognition plays vital role in smart cities for maintaining Law & Order and traffic management. NPR based system mainly involves four stages namely 1) Image capture & Pre-Processing 2) Number plate area determination 3) Character Segmentations 4) Recognition of all character. This survey paper extensively analyzed the method of extraction of number plate, its platform, performance and execution time.  With the development of Multilayer Perceptron Network accuracy and time in image processing has been achieved up to a great instant. Hence this analysis will help the precise assessment in establishing research and enable developers to assess which strategies are aggressive in present environment.




  • Keywords

    Image Processing: Multilayer Perceptron: Neural Network: Performance Analysis: Optical Character Recognition (OCR)

  • References

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Article ID: 15652
DOI: 10.14419/ijet.v7i3.10.15652

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