Design and Implementation for BIC Code Recognition System of Containers using OCR and CRAFT in Smart Logistics
Author:
Choi Hangseo1, Jeong Jongpil1, Lee Chaegyu1, Yun Seokwoo1, Bang Kyunga1, Byun Jaebeom1
Affiliation:
1. Department of Smart Factory Convergence, Sungkyunkwan University, Cheoncheon-dong, Jangan-gu Suwon-si, Gyeonggi-do, REPUBLIC OF KOREA
Abstract
The BIC (Bureau International des Containers et du Transport Intermodal) Code is the identification code for ocean shipping containers and is crucial for logistics, transportation, and security. Accurate recognition of container BIC Code is essential for efficient import and export processes, authorities' ability to intercept illegal goods and safe transportation. Nevertheless, the current practice of employees recognizing and manually entering container BIC codes is inefficient and prone to error. Although automated recognition efforts have been made, challenges remain due to the aging of containers, manufacturing differences between companies, and the mixing of letters and numbers in the 11-digit combination. In this paper, we propose the design and implementation of a BIC Code recognition system using an open source-based OCR engine, deep learning object detection algorithm, and text detector model. In the logistics industry, various attempts are being made to seamlessly link the data required at each stage of transportation between these systems. If we can secure the stability and consistency of BIC Code recognition that can be used in the field through our research, it will contribute to overcoming the instability caused by false positives.
Publisher
World Scientific and Engineering Academy and Society (WSEAS)
Subject
General Engineering,General Computer Science
Reference25 articles.
1. M. Goccia, M. Bruzzo, C. Scagliola, and S. Dellepiane, Recognition of container code characters through gray-level feature extraction and gradient-based classifier optimization, 7th Int. Conf. Document Anal. Recognit, Edinburgh, U.K., Aug. 2003, pp. 973–977. 2. W. Al-Khawand, S. Kadry, R. Bozzo, and S. Khaled, 8-neighborhood variant for a better container code extraction and recognition, Int.J. Comput. Sci. Inf. Secur, Vol.14, No.4, Apr. 2016, pp. 182–186. 3. D. G Lee, CNN-based Image Rotation Correction Algorithm to Improve Image Recognition Rate, The Journal of The Institute of Internet, Broadcasting and Communication (IIBC) Vol.20, No.1, 2022, pp.225-229. 4. S. Ren, K. He, R.B. Girshick, and J. Sun, Faster R-CNN: towards real-time object detection with region proposal networks. CoRR, 2015, abs.1506.01497. 5. J. Redmon, A. Farhadi, YOLOv3: An Incremental Improvement, Computer Vision and Pattern Recognition Workshops (CVPRW), 2018, pp.1-8.
|
|