Currency Recognition with Denomination based on Edge Detection and Neural Networks

Journal Title: GRD Journal for Engineering - Year 2018, Vol 3, Issue 0

Abstract

In this paper we have proposed an algorithm based on image processing that can efficiently recognize different currencies all over the world with edge detection and artificial neural networks which helps in decision making.

Authors and Affiliations

Naveen Karthick B, Raj Kumar T

Keywords

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  • EP ID EP294446
  • DOI -
  • Views 94
  • Downloads 0

How To Cite

Naveen Karthick B, Raj Kumar T (2018). Currency Recognition with Denomination based on Edge Detection and Neural Networks. GRD Journal for Engineering, 3(0), 42-46. https://europub.co.uk/articles/-A-294446