Document detail
ID

oai:arXiv.org:2411.04475

Topic
Computer Science - Computer Vision...
Author
Phan, Trong-Nhan Nguyen, Hoang-Hai Ha, Thi-Thu-Hien Thai, Huy-Tan Le, Kim-Hung
Category

Computer Science

Year

2024

listing date

11/13/2024

Keywords
process models
Metrics

Abstract

Visual inspections of bridges are critical to ensure their safety and identify potential failures early.

This inspection process can be rapidly and accurately automated by using unmanned aerial vehicles (UAVs) integrated with deep learning models.

However, choosing an appropriate model that is lightweight enough to integrate into the UAV and fulfills the strict requirements for inference time and accuracy is challenging.

Therefore, our work contributes to the advancement of this model selection process by conducting a benchmark of 23 models belonging to the four newest YOLO variants (YOLOv5, YOLOv6, YOLOv7, YOLOv8) on COCO-Bridge-2021+, a dataset for bridge details detection.

Through comprehensive benchmarking, we identify YOLOv8n, YOLOv7tiny, YOLOv6m, and YOLOv6m6 as the models offering an optimal balance between accuracy and processing speed, with mAP@50 scores of 0.803, 0.837, 0.853, and 0.872, and inference times of 5.3ms, 7.5ms, 14.06ms, and 39.33ms, respectively.

Our findings accelerate the model selection process for UAVs, enabling more efficient and reliable bridge inspections.

Phan, Trong-Nhan,Nguyen, Hoang-Hai,Ha, Thi-Thu-Hien,Thai, Huy-Tan,Le, Kim-Hung, 2024, Deep Learning Models for UAV-Assisted Bridge Inspection: A YOLO Benchmark Analysis

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