Jurnal Teknimedia: Teknologi Informasi dan Multimedia
Vol. 5 No. 2 (2024): Desember 2024

IDENTIFIKASI PENULIS MENGGUNAKAN CONVOLUSIONAL NAURAL NETWORK BERDASARKAN KARAKTER TULISAN TANGAN

Much Chafid (Unknown)
Muhammad Turmudzi (Unknown)
Agus Wibowo (Unknown)
Pratama Eskaluspita (Unknown)
Ervina Yuniati Rokhmah (Unknown)
Dinda Heidiyuan Agustalita (Unknown)



Article Info

Publish Date
12 Dec 2024

Abstract

An application or system is needed to distinguish handwritten characters, and it can be used to identify author-based handwritten characters. The aim of this research is so that the system created can determine whether a piece of handwriting is the work of a particular author. The creation of handwritten text can be done by capturing the image using a scanner with an image quality of 300 dpi, segmenting it using the thresholding method and contour selection from the image, combining the segmented images and processing the image from the segmentation results. The results of the convolutional autoencoder can be input into transfer learning (lazy learning) using KNN method to match with the author's handwriting. The study used 100 data sets from 20 authors, each of whom wrote five times. In the first trial, we used the dataset in handwritten sentence fragments from the title of a poem by Chairil Anwar. Tests were performed by comparing the machine learning process with and without a convolutional autoencoder. The test results with a convolutional autoencoder showed an accuracy of 89%, while the results without a convolutional autoencoder showed an accuracy of 88%.

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Journal Info

Abbrev

teknimedia

Publisher

Subject

Computer Science & IT Control & Systems Engineering Engineering

Description

JURNAL TEKNIMEDIA : Teknologi Informasi dan Multimedia terbitan berkala ilmiah nasional diterbitkan oleh STMIK Syaikh Zainuddin NW Anjani. Tujuan diterbitkannya Jurnal TEKNIMEDIA adalah untuk memfasilitasi publikasi ilmiah dari hasil penelitian-penelitian di Indonesia serta ikut mendorong ...