Journal of Advanced Transportation (Jan 2021)

Truck-Lifting Prevention System Based on Vision Tracking for Container-Lifting Operation

  • Qingfeng Huang,
  • Yage Huang,
  • Zhiwei Zhang,
  • Yujie Zhang,
  • Weijian Mi,
  • Chao Mi

DOI
https://doi.org/10.1155/2021/9612480
Journal volume & issue
Vol. 2021

Abstract

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Truck-lifting accidents are common in container-lifting operations. Previously, the operation sites are needed to arrange workers for observation and guidance. However, with the development of automated equipment in container terminals, an automated accident detection method is required to replace manual workers. Considering the development of vision detection and tracking algorithms, this study designed a vision-based truck-lifting prevention system. This system uses a camera to detect and track the movement of the truck wheel hub during the operation to determine whether the truck chassis is being lifted. The hardware device of this system is easy to install and has good versatility for most container-lifting equipment. The accident detection algorithm combines convolutional neural network detection, traditional image processing, and a multitarget tracking algorithm to calculate the displacement and posture information of the truck during the operation. The experiments show that the measurement accuracy of this system reaches 52 mm, and it can effectively distinguish the trajectories of different wheel hubs, meeting the requirements for detecting lifting accidents.