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Advisor(s)
Abstract(s)
This paper presents a novel automated road damage detection approach using Unmanned Aerial Vehicle
(UAV) images and deep learning techniques. Maintaining road infrastructure is critical for ensuring a
safe and sustainable transportation system. However, the manual collection of road damage data can be
labor-intensive and unsafe for humans. Therefore, we propose using UAVs and Artificial Intelligence
(AI) technologies to improve road damage detection’s efficiency and accuracy significantly. Our proposed
approach utilizes three algorithms, YOLOv4, YOLOv5, and YOLOv7, for object detection and localization
in UAV images. We trained and tested these algorithms using a combination of the RDD2022 dataset
from China and a Spanish road dataset. The experimental results demonstrate that our approach is efficient
and achieves 59.9% mean average precision mAP@.5 for the YOLOv5 version, 73.20% mAP@.5 for the
YOLOv7 version, and 65.70% mAP@.5 for a YOLOv5 model with a Transformer Prediction Head. These
results demonstrate the potential of using UAVs and deep learning for automated road damage detection and
pave the way for future research in this field.
Description
Keywords
UAV Road Damage Detection Deep Learning Object-detection
