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Investigation of the Transferability of Measured Data for Application of YOLOv8s in the Identification of Road Defects: An SA-Indian Case Study

Author

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  • Tolulope Babawarun

    (Department of Mechanical, Bioresources and Biomedical Engineering, School of Engineering and the Built Environment, College of Science, Engineering, and Technology, University of South Africa, Private Bag X6, Johannesburg 1710, South Africa)

  • Thanyani Pandelani

    (Department of Mechanical, Bioresources and Biomedical Engineering, School of Engineering and the Built Environment, College of Science, Engineering, and Technology, University of South Africa, Private Bag X6, Johannesburg 1710, South Africa)

  • Harry M. Ngwangwa

    (Department of Mechanical, Bioresources and Biomedical Engineering, School of Engineering and the Built Environment, College of Science, Engineering, and Technology, University of South Africa, Private Bag X6, Johannesburg 1710, South Africa)

Abstract

This study investigates the transferability of measured road-damage data between distinct geographic domains using the YOLOv8s deep-learning framework. A comparative evaluation was performed on two datasets: the locally developed RDD2024_SA (South Africa) and the publicly available RDD2022_India (India). Five training–testing scenarios were designed to analyze intra- and inter-dataset generalization, emphasizing the influence of dataset scale, annotation consistency, and class structure on detection performance. When trained and tested within the same domain, YOLOv8s achieved high accuracy (mAP@0.5 > 0.95), confirming the strength of localized feature learning. However, performance degraded substantially under cross-domain testing, revealing a sensitivity to differences in road texture, illumination, and labeling style. Reducing the number of classes from six to four dominant types improved stability (mAP@0.5 ≈ 0.78) by mitigating annotation noise and class imbalance. Furthermore, a transfer-learning configuration, in which the India-trained model was fine-tuned on 20% of the South-African dataset, achieved mAP@0.5 = 0.86, demonstrating effective recovery of cross-domain detection performance. These findings highlight the importance of domain-aligned data preparation, targeted fine-tuning, and balanced class representation in building robust and transferable AI systems for sustainable, data-driven road maintenance.

Suggested Citation

  • Tolulope Babawarun & Thanyani Pandelani & Harry M. Ngwangwa, 2025. "Investigation of the Transferability of Measured Data for Application of YOLOv8s in the Identification of Road Defects: An SA-Indian Case Study," Sustainability, MDPI, vol. 17(23), pages 1-25, November.
  • Handle: RePEc:gam:jsusta:v:17:y:2025:i:23:p:10641-:d:1804655
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