Implementasi Convolutional Neural NetworkUntuk Deteksi NyeriBayi Melalui Citra Wajah Dengan YOLO
Dublin Core
Title
Implementasi Convolutional Neural NetworkUntuk Deteksi NyeriBayi Melalui Citra Wajah Dengan YOLO
Subject
NVDIA Jetson Nano Developer Kit, Pain, Baby, YOLO, PyTorch, CNN, Facial Expresion
Description
Pain in a baby is difficult to detect is because the method for detecting pain is self-reporting even though babies themselves still cannot describe the pain verbally, then by observing changes in behavior in the form of facial expressions. Statistically, it is also recorded that about 80% of the world's population pays less attention to pain assessment, especially for children, even though this pain gives children a bad experience so that it can interfere with pain responses in the future or psychological trauma. Based on these problems, a prototype system was made using the NVIDIA Jetson Nano Developer kit to help detect pain, especially in infants 0-12 months by using the Convolutional Neural Network (CNN) model with the PyTorch framework and the You Only Look Once (YOLO) algorithm with three detection classification is sad, neutral and sick. From the results ofthe study, it was found that the YOLO algorithm was able to detect the three classifications with [email protected] of sad 97,9%, neutral 99,2%, pain 96,9%, model accuracy 70%. The result of random check and the data from Puskesam Imogiri 1 have accuracy value 90%
Creator
Tomy Abuzairi1, Nurdina Widanti2, Arie Kusumaningrum3, Yeni Rustina
Source
https://jurnal.iaii.or.id/index.php/RESTI/issue/view/24
Publisher
Universitas Indonesia
Date
20 agustus 2021
Contributor
Fajar bagus W
Format
PDF
Language
Indonesia
Type
Text
Files
Collection
Citation
Tomy Abuzairi1, Nurdina Widanti2, Arie Kusumaningrum3, Yeni Rustina, “Implementasi Convolutional Neural NetworkUntuk Deteksi NyeriBayi Melalui Citra Wajah Dengan YOLO,” Repository Horizon University Indonesia, accessed May 20, 2025, https://repository.horizon.ac.id/items/show/8611.