Peningkatan Keamanan Dokumen Digital Berdasarkan Metode Eigenface Dalam Sistem Verifikasi Ijazah

Budi Triandi, Lili Tanti

Abstract


Protection of important and privacy documents are a must, the originality of documents is very important to maintain because obtaining these important documents requires serious effort. Document modification errors are increasing due to technological developments which result in the use of digital documents for increasing efficiency, so this research can be a solution for important documents such as diplomas and certificates. This study offers a document security system by analyzing the photo of the owner of the document by applying the Eigenface method with Principal Component Analysis PCA calculus to find the minimum threshold value for the distance (euclidean) between the test image and the training image, this concept can be promised stability in analyzing the image so that for problems this can be relied on in increasing the security of digital documents that are considered important. from the test results the accuracy level obtained is 85.5% and the system can provide document validation information very well.


References


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DOI: http://dx.doi.org/10.30645/senaris.v4i2.226

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