Scientific journal paper Q1
High-precision pose measurement of containers on the transfer platform of the dual-trolley quayside container crane based on machine vision
Jiaqi Wang (Wang, J.); Mengjie He (He, M.); Yujie Zhang (Zhang, Y.); Zhiwei Zhang (Zhang, Z.); Octavian Postolache (Postolache, O.); Chao Mi (Mi, C.);
Journal Title
Sensors
Year (definitive publication)
2025
Language
English
Country
Switzerland
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Abstract
To address the high-precision measurement requirements for container pose on dual-trolley quayside crane-transfer platforms, this paper proposes a machine vision-based measurement method that resolves the challenges of multi-scale lockhole detection and precision demands caused by complex illumination and perspective deformation in port operational environments. A hardware system comprising fixed cameras and edge computing modules is established, integrated with an adaptive image-enhancement preprocessing algorithm to enhance feature robustness under complex illumination conditions. A multi-scale adaptive frequency object-detection framework is developed based on YOLO11, achieving improved detection accuracy for multi-scale lockhole keypoints in perspective-distortion scenarios (mAP@0.5 reaches 95.1%, 4.7% higher than baseline models) through dynamic balancing of high–low-frequency features and adaptive convolution kernel adjustments. An enhanced EPnP optimization algorithm incorporating lockhole coplanar constraints is proposed, establishing a 2D–3D coordinate transformation model that reduces pose-estimation errors to millimeter level (planar MAE-P = 0.024 m) and sub-angular level (MAE-0 = 0.11°). Experimental results demonstrate that the proposed method outperforms existing solutions in container pose-deviation-detection accuracy, efficiency, and stability, proving to be a feasible measurement approach.
Acknowledgements
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Keywords
Machine vision,Dual-trolley quayside container crane,Container-transfer platform,High-precision pose measurement,Adaptive image enhancement,Multi-scale object detection
  • Computer and Information Sciences - Natural Sciences
  • Physical Sciences - Natural Sciences
  • Chemical Sciences - Natural Sciences
  • Biological Sciences - Natural Sciences
  • Other Engineering and Technology Sciences - Engineering and Technology
  • Electrical Engineering, Electronic Engineering, Information Engineering - Engineering and Technology
  • Clinical Medicine - Medical and Health Sciences
  • Other Medical Sciences - Medical and Health Sciences
Funding Records
Funding Reference Funding Entity
52472435 National Natural Science Foundation of China
UIDB/50008/2020 Fundação para a Ciência e a Tecnologia
22ZR1427700 Science and Technology Commission of Shanghai Municipality
B2023003 Education Science Research Project of Shanghai Municipality