ATM Security Using Image Processing in Machine Learning

Jalinder EkatpureAssistant Professor, B.E., Computer engineering, SPVP, S.B.Patil College of Engineering, Pune, Maharashtra, IndiaDheeraj NairStudent, B.E., Computer engineering, SPVP, S.B.Patil College of Engineering, Pune, Maharashtra, IndiaMadhav DeshpandeStudent, B.E., Computer engineering, SPVP, S.B.Patil College of Engineering, Pune, Maharashtra, IndiaSandip SagareStudent, B.E., Computer engineering, SPVP, S.B.Patil College of Engineering, Pune, Maharashtra, IndiaPankaj JadhavStudent, B.E., Computer engineering, SPVP, S.B.Patil College of Engineering, Pune, Maharashtra, India

Vol 5 No 6 (2021): Volume 5, Issue 6, June 2021 | Pages: 29-31

International Research Journal of Innovations in Engineering and Technology

OPEN ACCESS | Research Article | Published Date: 11-06-2021

doi Logo doi.org/10.47001/IRJIET/2021.506006

Abstract

The real-time face detection and recognition has been made possible by using the method of Viola jones, Analysis work. The software first taking images of all persons and stores the information into database. Proposed work deals with automated system to detect person. The methodology comprised of three phases, first face Detection from image, second get all detail of face for the purpose of feature extraction. The most useful and unique features of the camera image are extracted in the feature extraction phase. Find out all facial details are visible. This feature vector forms an efficient representation of the face. In third phase and grab our feature extraction has been created to find the person how osculated face. 

Keywords

Detection, Recognition, database


Citation of this Article

Jalinder Ekatpure, Dheeraj Nair, Madhav Deshpande, Sandip Sagare, Pankaj Jadhav, “ATM Security Using Image Processing in Machine Learning” Published in International Research Journal of Innovations in Engineering and Technology - IRJIET, Volume 5, Issue 6, pp 29-31, June 2021. Article DOI https://doi.org/10.47001/IRJIET/2021.506006

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