IMPLEMENTASI ALGORITMA EIGENFACE UNTUK FACE RECOGNITION PADA OBJECK FOTO ID CARD

Alam, RG Guntur and Rozali, Toyib and Edo, Winarta P S (2015) IMPLEMENTASI ALGORITMA EIGENFACE UNTUK FACE RECOGNITION PADA OBJECK FOTO ID CARD. Telematik, 7 (2). pp. 1648-1656. ISSN 1979-8555

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Abstract

Face recognition is a continuation of the process of face detection in image processing. Face recognition is one of the areas of artificial intelligence research is part of biometric technology. The development of this technology allows creating a system that can help people in the introduction of a digital image. One of these areas is now beginning to be developed is pattern recognition. This technology identifies specific characteristics of the physical one, For example pattern recognition example is face recognition (face recognition), Introduction iris (iris recognition), fingerprint recognition (finger recognition), and others. In this study the problems that you want to solve is how to implement the Eigenface algorithm for face recognition on the objects of his special photo ID card that is dicropping of id card. This study aims to determine how the remedy works eigenface algorithm to recognize faces and know what level of accuracy obtained from using face recognition algorithm Eigenface this. In this study, using a sample image in the face as many as 15 images, 10 images of the images contained in the database and 5 image of the image that are not in the database .Tests were done on a sample face image contained in databases managed to recognize a face image 9 of 10 samples contained in a facial image database, while testing with 5 sample face image which is not contained in the database all familiar with his success in either. From the test results at the level of accuracy that can use Eigenface algorithm to calculate the level of accuracy in using the Confusion Matrix to the accuracy of 93%. Errors in the introduction may occur due to the similarity between the features contained two or more different samples.

Item Type: Article
Subjects: T Technology > T Technology (General)
Divisions: Faculty of Engineering > Journal
Depositing User: Septi Septi
Date Deposited: 14 Nov 2019 08:34
Last Modified: 14 Nov 2019 08:34
URI: http://repository.unib.ac.id/id/eprint/18865

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