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Small Object Detection and Object Counting for Primary Roe Dataset Based on Yolo

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posted on 2025-06-05, 06:07 authored by Wahyu Andi Saputra, Nicolaus Euclides Wahyu Nugroho, Dany Candra Febrianto, Andi Prademon Yunus, Muhammad Azrino Gustalika, Yit Hong ChooYit Hong Choo
This research offers an initial exploration into the effectiveness of three variations of the YOLOv8 model original, trimmed, and YOLOv8n.pt in combination with two distinct datasets characterized by tight and loose distributions of roe, aimed at enhancing small object detection and counting accuracy. Utilizing a primary roe dataset across 776 images, the research systematically compares these model-dataset configurations to identify the most effective combination for precise object detection. The experimental results reveal that the YOLOv8n.pt model combined with the loosely distributed dataset achieves the highest detection performance, with a mean Average Precision (mAP) of 53.86%. This outcome underscores the critical impact of both model selection and data distribution on the detection accuracy in machine learning applications. The findings highlight the importance of tailored model and dataset synergies in optimizing detection tasks, particularly in complex scenarios involving small, densely clustered objects. This research contributes valuable insights into the strategic deployment of neural network architectures for refined object detection challenges.

History

Journal

JURNAL TEKNIK INFORMATIKA

Volume

18

Pagination

166-172

Location

Jakarta, Indonesia

Open access

  • Yes

ISSN

1979-9160

eISSN

2549-7901

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Issue

1

Publisher

LP2M Universitas Islam Negeri (UIN) Syarif Hidayatullah Jakarta

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