CrossRef Open Access 2025 2 sitasi

Development and Validation of a Computer Vision Dataset for Object Detection and Instance Segmentation in Earthwork Construction Sites

JongHo Na JaeKang Lee HyuSoung Shin IlDong Yun

Abstrak

Construction sites report the highest rate of industrial accidents, prompting the active development of smart safety management systems based on deep learning-based computer vision technology. To support the digital transformation of construction sites, securing site-specific datasets is essential. In this study, raw data were collected from an actual earthwork site. Key construction equipment and terrain objects primarily operated at the site were identified, and 89,766 images were processed to build a site-specific training dataset. This dataset includes annotated bounding boxes for object detection and polygon masks for instance segmentation. The performance of the dataset was validated using representative models—YOLO v7 for object detection and Mask R-CNN for instance segmentation. Quantitative metrics and visual assessments confirmed the validity and practical applicability of the dataset. The dataset used in this study has been made publicly available for use by researchers in related fields. This dataset is expected to serve as a foundational resource for advancing object detection applications in construction safety.

Penulis (4)

J

JongHo Na

J

JaeKang Lee

H

HyuSoung Shin

I

IlDong Yun

Format Sitasi

Na, J., Lee, J., Shin, H., Yun, I. (2025). Development and Validation of a Computer Vision Dataset for Object Detection and Instance Segmentation in Earthwork Construction Sites. https://doi.org/10.3390/app15169000

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Informasi Jurnal
Tahun Terbit
2025
Bahasa
en
Total Sitasi
Sumber Database
CrossRef
DOI
10.3390/app15169000
Akses
Open Access ✓