4.7 Article

Real-Time Detection of Ground Objects Based on Unmanned Aerial Vehicle Remote Sensing with Deep Learning: Application in Excavator Detection for Pipeline Safety

期刊

REMOTE SENSING
卷 12, 期 1, 页码 -

出版社

MDPI
DOI: 10.3390/rs12010182

关键词

YOLOv3; deep learning; real-time detection; unmanned aerial vehicle (UAV); remote sensing

资金

  1. Sichuan Province Science and Technology Plan Applied Basic Research Project [2019YJ0205]
  2. Chengdu Basic Innovation Research and Development Project [2018-YF05-01475-GX]
  3. Fundamental Research Funds for the Central Universities of China [ZYGX2019J069]

向作者/读者索取更多资源

Unmanned aerial vehicle (UAV) remote sensing and deep learning provide a practical approach to object detection. However, most of the current approaches for processing UAV remote-sensing data cannot carry out object detection in real time for emergencies, such as firefighting. This study proposes a new approach for integrating UAV remote sensing and deep learning for the real-time detection of ground objects. Excavators, which usually threaten pipeline safety, are selected as the target object. A widely used deep-learning algorithm, namely You Only Look Once V3, is first used to train the excavator detection model on a workstation and then deployed on an embedded board that is carried by a UAV. The recall rate of the trained excavator detection model is 99.4%, demonstrating that the trained model has a very high accuracy. Then, the UAV for an excavator detection system (UAV-ED) is further constructed for operational application. UAV-ED is composed of a UAV Control Module, a UAV Module, and a Warning Module. A UAV experiment with different scenarios was conducted to evaluate the performance of the UAV-ED. The whole process from the UAV observation of an excavator to the Warning Module (350 km away from the testing area) receiving the detection results only lasted about 1.15 s. Thus, the UAV-ED system has good performance and would benefit the management of pipeline safety.

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