TELKOMNIKA Telecommunication, Computing, Electronics and Control
Single object detection to support requirements modeling using faster R-CNN
Dublin Core
Title
TELKOMNIKA Telecommunication, Computing, Electronics and Control
Single object detection to support requirements modeling using faster R-CNN
Single object detection to support requirements modeling using faster R-CNN
Subject
Faster R-CNN, iStar 2.0, Object detection and recognition, Requirements modeling tool
Description
Requirements engineering (RE) is one of the most important phases of
a software engineering project in which the foundation of a software product is laid, objectives and assumptions, functional and non-functional needs are analyzed and consolidated. Many modeling notations and tools are developed to model the information gathered in the RE process, one popular framework is the iStar 2.0. Despite the frameworks and notations that are introduced, many engineers still find that drawing the diagrams is easier done manually by hand. Problem arises when the corresponding diagram needs to be updated as requirements evolve. This research aims to kickstart the development of a modeling tool using Faster Region-based Convolutional Neural Network for single object detection and recognition of hand-drawn iStar 2.0 objects, Gleam grayscale, and Salt and Pepper noise to digitalize hand-drawn diagrams. The single object detection and recognition tool
is evaluated and displays promising results of an overall accuracy and
precision of 95%, 100% for recall, and 97.2% for the F-1 score.
a software engineering project in which the foundation of a software product is laid, objectives and assumptions, functional and non-functional needs are analyzed and consolidated. Many modeling notations and tools are developed to model the information gathered in the RE process, one popular framework is the iStar 2.0. Despite the frameworks and notations that are introduced, many engineers still find that drawing the diagrams is easier done manually by hand. Problem arises when the corresponding diagram needs to be updated as requirements evolve. This research aims to kickstart the development of a modeling tool using Faster Region-based Convolutional Neural Network for single object detection and recognition of hand-drawn iStar 2.0 objects, Gleam grayscale, and Salt and Pepper noise to digitalize hand-drawn diagrams. The single object detection and recognition tool
is evaluated and displays promising results of an overall accuracy and
precision of 95%, 100% for recall, and 97.2% for the F-1 score.
Creator
Nathanael Gilbert, Andre Rusli
Source
DOI: 10.12928/TELKOMNIKA.v18i2.14838
Publisher
Universitas Ahmad Dahlan
Date
April 2020
Contributor
Sri Wahyuni
Rights
ISSN: 1693-6930
Relation
http://journal.uad.ac.id/index.php/TELKOMNIKA
Format
PDF
Language
English
Type
Text
Coverage
TELKOMNIKA Telecommunication, Computing, Electronics and Control
Files
Collection
Citation
Nathanael Gilbert, Andre Rusli, “TELKOMNIKA Telecommunication, Computing, Electronics and Control
Single object detection to support requirements modeling using faster R-CNN,” Repository Horizon University Indonesia, accessed November 21, 2024, https://repository.horizon.ac.id/items/show/3713.
Single object detection to support requirements modeling using faster R-CNN,” Repository Horizon University Indonesia, accessed November 21, 2024, https://repository.horizon.ac.id/items/show/3713.