Litcius/Paper detail

The Detection of Counterfeit Banknotes Using Ensemble Learning Techniques of AdaBoost and Voting

Directorate General of Education in Babylon, Rihab Salah Khairy, Ameer Hussein, Directorate General of Education in Babylon, Haider TH. Salim ALRikabi

2020International journal of intelligent engineering and systems82 citationsDOIOpen Access PDF

Abstract

The movement of cash flow transactions by either electronic channels or physically created openings for the influx of counterfeit banknotes in financial markets. Aided by global economic integration and expanding international trade, attention must be geared at robust techniques for the recognition and detection of counterfeit banknotes. This paper presents ensemble learning algorithms for banknotes detection. The AdaBoost and voting ensemble are deployed in combination with machine learning algorithms. Improved detection accuracies are produced by the ensemble methods. Simulation results certify that the ensemble models of AdaBoost and voting provided accuracies of up to 100% for counterfeit banknotes.

Topics & Concepts

AdaBoostCounterfeitVotingComputer scienceBanknoteEnsemble learningArtificial intelligenceMachine learningPattern recognition (psychology)Support vector machinePoliticsLawPolitical scienceCurrency Recognition and DetectionBlockchain Technology Applications and Security