INTRODUCTION OF REAL TIME FACE LOW COST USING DIGILENT PYNQ-Z1 WITH PCA METHOD

Authors

  • Arief Ainur Rafiq Department of Electronic Engineering, Polytechnic of Cilacap , Jurusan Teknik Elektronika, Politeknik Negeri Cilacap
  • Pujono Pujono Department of Electronic Engineering, Polytechnic of Cilacap , Jurusan Teknik Elektronika, Politeknik Negeri Cilacap
  • Eka Dyah Puspitasari Department of Electronic Engineering, Polytechnic of Cilacap , Jurusan Teknik Elektronika, Politeknik Negeri Cilacap

DOI:

https://doi.org/10.33019/ecotipe.v6i1.1394

Keywords:

FPGA, PCA, Face Recognition, Real Time

Abstract

Nowadays, face recognition plays central role in monitoring, biometric, and security fields. This paper presents FPGA (Field Programmable Gate Array) using real-time architecture basis. It costs less for face recognition. The face recognition module recognizes faces that have been detected by video and then the data are processed by using eigenface or Principal Component Analysis (PCA) algorithm. The architecture is implemented in FDGA Digilent Pynq-Z1, while the proposed architecture is part of the system that can recognize faces in crowd with series of faces that have been set before. In the implementation, this system can be integrated in the real-time monitoring system in crowd (such as airport, bus station, railway station, and port) to identify threat source. It is hoped that it can also decrease the criminal activity.

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Published

22.04.2019

How to Cite

[1]
A. A. Rafiq, P. Pujono, and E. D. Puspitasari, “INTRODUCTION OF REAL TIME FACE LOW COST USING DIGILENT PYNQ-Z1 WITH PCA METHOD”, JurnalEcotipe, vol. 6, no. 1, pp. 49–55, Apr. 2019, doi: 10.33019/ecotipe.v6i1.1394.

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