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Development of an End-to-End Form Data Capture Model for an Electronic Election Recapitulation System

This paper discusses the development of a data capture model that aids vote tabulation in the Indonesian election process. The model can scan and transcribe the standardized C-form into a digital format to reduce the potential for human error in manual transcription. The focus of the study is on bui...

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Main Authors: Chandra, James, Perdana, Riza Satria, Akbar, Saiful
Format: Conference Proceeding
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Perdana, Riza Satria
Akbar, Saiful
description This paper discusses the development of a data capture model that aids vote tabulation in the Indonesian election process. The model can scan and transcribe the standardized C-form into a digital format to reduce the potential for human error in manual transcription. The focus of the study is on building the end-to-end vision engine for Optical Character Recognition (OCR) and Optical Mark Recognition (OMR), creating a dynamic, format-adaptive model, and developing a form sheet page identification system to safeguard against mis-ordered page uploads. Various alternative methods are explored to address these key areas, such as alternative image preprocessing, testing OCR libraries versus self-built OCR using convolutional neural networks, implementing configuration files for engine dynamism, and fiducial marker identification. The self-developed OCR model succeeded in detecting digits 0-9, achieving an average accuracy of 89% per number. Furthermore, dynamization efforts with configuration files and contour detection had an average computation time of just 0.0021 seconds to find the field location on the second page sample of the form. The page identification feature was successfully implemented, utilizing the AprilTag fiducial marker due to its resistance to occlusion, fast computation time, and high reading accuracy.
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subjects Adaptation models
AprilTag
Computational modeling
convolutional neural network
Data models
fiducial marker
image pre-processing
Optical character recognition
Optical imaging
optical mark recognition
Predictive models
Voting
title Development of an End-to-End Form Data Capture Model for an Electronic Election Recapitulation System
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