Implementasi YOLOv8 dan Pengaruh Augmentasi Data dalam Sistem Deteksi Faktor Risiko Sudden Infant Death Syndrom (SIDS) pada Bayi

Authors

  • Rhadis Steffani Saputri Universitas Dinamika Bangsa
  • Jasmir Jasmir Universitas Dinamika Bangsa
  • Gunardi Gunardi Universitas Dinamika Bangsa

DOI:

https://doi.org/10.61132/prosemnasproit.v2i2.69

Keywords:

Augmentasi Data, Deep Learning, Object Detection, SIDS, YOLOv8

Abstract

Sudden Infant Death Syndrome (SIDS) is a sudden and unexpected death in infants that is often associated with the prone sleeping position. This study aims to develop an automated monitoring system capable of detecting SIDS risk factors using the YOLOv8 algorithm and to analyze the effect of data augmentation on model performance. The dataset consists of two classes, baby-lying-on-back (supine) and baby-lying-on-stomach (prone), which were processed through model training and evaluation using precision, recall, F1-score, and mAP metrics. The model was trained under two scenarios, without data augmentation and with data augmentation. The results show that the model without augmentation achieved a precision of 90%, recall of 85%, F1-score of 86%, and mAP50 of 93.7%. After applying augmentation, performance improved to a precision of 90%, recall of 87%, F1-score of 88%, and mAP50 of 95.1%. These findings indicate that augmentation increases detection accuracy and enhances model generalization, including robustness against variations in lighting and camera angles. Furthermore, testing with image and video inputs revealed that the non-augmented model exhibited a tendency toward overfitting, particularly in favor of the baby-lying-on-stomach, whereas the augmented model successfully classified both classes accurately. The developed system is also equipped with an alarm feature and early-warning notifications via Telegram to smartphone when a prone position is detected for a certain duration. Overall, the results demonstrate that YOLOv8 with data augmentation is effective for an automated, non-invasive monitoring system for infants, making it suitable for detecting and preventing potential SIDS risk factors.

References

Al-Fahrezi, M. A. (2025). Pengaruh Augmentasi Data Terhadap Akurasi Pelatihan Model CNN untuk Klasifikasi Jenis Ikan. JITSI : Jurnal Ilmiah Teknologi Sistem Informasi, 6(2), 177–185. https://doi.org/10.62527/jitsi.6.2.471

Ananta, E. D., Syaifudin, S., Soetjiatie, L. D., & Utomo, B. (2023). Development IoT-based Infant Monitoring System for Preventing Sudden Infant Death Syndrome (SIDS) with Abnormal Condition Notifications and Lost Data Analysis. Jurnal Teknokes, 16(2). https://doi.org/10.35882/teknokes.v16i2.485

Andrian, A., Rochmah, E. N., & Musti, D. B. (2022). Characteristic Of Suddent Infant Death Syndrome (SIDS) Knowledge Of General Practitioner In Bandung City At 2020. Jurnal Eduhealt, 13(1), 358–363.

Apriliana, H. K., Kornarius, Y. P., Caroline, A., Gusti, T. E. P., & Gunawan, A. (2024). Perkembangan Penerapan Teknologi Artificial Intelligence di Indonesia. Jurnal Syntax Admiration, 5(10), 3864–3874. https://doi.org/10.46799/jsa.v5i10.1486

Auliaddina, S., & Arifin, T. (2024). Use of Augmentation Data and Hyperparameter Tuning in Batik Type Classification using the CNN Model. SISTEMASI, 13(1), 114. https://doi.org/10.32520/stmsi.v13i1.3395

Golfantara, M. F. (2024). Penggunaan Algoritma YOLO v8 Untuk Identifikasi Rempah-Rempah. Jurnal Informatika dan Teknik Elektro Terapan, 12(3S1). https://doi.org/10.23960/jitet.v12i3S1.5221

Khairunisa, N., Carudin, & Jamaludin, A. (2024). Analisis Perbandingan Algoritma CNN Dan YOLO Dalam Mengidentifikasi Kerusakan Jalan. Jurnal Informatika dan Teknik Elektro Terapan, 12(3). https://doi.org/10.23960/jitet.v12i3.4434

Liaqat, M., Sehar, S., & Afzal, M. (2019). Sudden Infant Death Syndrome: A Case Report in Pakistan. Journal of Medicine, Physiology and Biophysics, 62. https://doi.org/10.7176/JMPB/62-04

Ligar, B. W. (2023). Review Identifikasi dan Klasifikasikan Biji Kopi Menggunakan Computer Vision. Jurnal Sistem dan Teknologi Informasi (JustIN), 11(2), 243. https://doi.org/10.26418/justin.v11i2.54925

Mayangsari, D. N. (2025). Mengaplikasikan Model Kathryn E. Barnard dalam Memberikan Asuhan Keperawatan pada Anak Sudden Infant Death Syndrome dengan Gangguan Pertukaran Gas. Madani: Jurnal Ilmiah Multidisiplin, 3(6), 791–794. https://doi.org/10.5281/ZENODO.16784254

Moon, R. Y., Carlin, R. F., & Hand, I. (2022). Sleep-Related Infant Deaths: Updated 2022 Recommendations for Reducing Infant Deaths in the Sleep Environment. Pediatrics, 150(1), e2022057990. https://doi.org/10.1542/peds.2022-057990

Muzammil, M. A. A., & Indraswari, R. (2024). Pengembangan Arsitektur Model YOLOv8 untuk Meningkatkan Performa Object Detection pada Varian Boks Warehouse Palletizing. ILKOMNIKA: Journal of Computer Science and Applied Informatics, 6(2), 19–30. https://doi.org/10.28926/ilkomnika.v6i2.642

Pakpahan, R. (2021). Analisa Pengaruh Implementasi Artificial Intelligence Dalam Kehidupan Manusia. Journal of Information System, Informatics and Computing, 5(2). https://doi.org/10.52362/jisicom.v5i2

Perrone, S., Lembo, C., Moretti, S., Prezioso, G., Buonocore, G., Toscani, G., Marinelli, F., Nonnis-Marzano, F., & Esposito, S. (2021). Sudden Infant Death Syndrome: Beyond Risk Factors. Life, 11(3), 184. https://doi.org/10.3390/life11030184

Poerwandono, E., & Barronzoeputra, G. Q. (2024). Implementasi Algoritma You Only Look Once (YOLOv8) untuk Mendeteksi Pelanggaran Lalu Lintas Berupa Tidak Menggunakan Helm (Studi Kasus di Jatiasih, Bekasi). Jurnal Indonesia : Manajemen Informatika dan Komunikasi, 5(3), 3237–3247. https://doi.org/10.35870/jimik.v5i3.1017

Primasari, D., Ferdian, G., Aulia, Z., Tussyifaa, U., & Wiranto, A. R. (2024). Sistem Smart Traffic Light Menggunakan Algoritma YOLOv8. JTT (Jurnal Teknologi Terapan), 10(1), 61. https://doi.org/10.31884/jtt.v10i1.622

Rifky, S., Lalu Puji Indra Kharisma, Achmad Ruslan Afendi, Ira zulfa, Segar Napitupulu, Mustika Ulina, Wulan Sri Lestari, I Made Dendi Maysanjaya, Kelvin, Frans Mikael Sinaga, Mutmainnah Muchtar, Loso Judijanto, Apriyanto Halim, Rudy Dwi Laksono, Diema Hernyka Satyareni, & Ahmad Ashril Rizal. (2024). Artificial Intelligence (Teori dan Penerapan AI di berbagai Bidang). PT. Sonpedia Publishing Indonesia. http://www.sonpedia.com/

Salamah, Y., & Basari, B. (2022). Desain Arsitektur Sistem Pemantauan Tanda Vital dan Postur Bayi Berbasis Wearable dalam Pencegahan Kejadian Bayi Mati Mendadak. Medika Teknika : Jurnal Teknik Elektromedik Indonesia, 4(1), 29–44. https://doi.org/10.18196/mt.v4i1.15226

Sasongko, T. B., Haryoko, H., & Amrullah, A. (2023). Analisis Efek Augmentasi Dataset dan Fine Tune pada Algoritma Pre-Trained Convolutional Neural Network (CNN). Jurnal Teknologi Informasi dan Ilmu Komputer, 10(4), 763–768. https://doi.org/10.25126/jtiik.20241046583

Sodini, C., Paglialonga, L., Antoniol, G., Perrone, S., Principi, N., & Esposito, S. (2022). Home Cardiorespiratory Monitoring in Infants at Risk for Sudden Infant Death Syndrome (SIDS), Apparent Life-Threatening Event (ALTE) or Brief Resolved Unexplained Event (BRUE). Life, 12(6), 883. https://doi.org/10.3390/life12060883

Yudhi, M. F., Erzed, N., & Asri, J. S. (2025). Implementasi Perbandingan YOLOv8 Dan YOLOv11 dalam Penerapan Tata Tertib Berpakaian di Lingkungan Kampus Studi Kasus Universitas Esa Unggul Kampus Bekasi. Kohesi: Jurnal Multidisiplin Saintek, 7(3). https://doi.org/10.8734/Kohesi.v1i2.365

Downloads

Published

2025-12-30

How to Cite

Rhadis Steffani Saputri, Jasmir Jasmir, & Gunardi Gunardi. (2025). Implementasi YOLOv8 dan Pengaruh Augmentasi Data dalam Sistem Deteksi Faktor Risiko Sudden Infant Death Syndrom (SIDS) pada Bayi. Prosiding Seminar Nasional Ilmu Teknik, 2(2), 625–640. https://doi.org/10.61132/prosemnasproit.v2i2.69