Abstract
Recent advancement in Deep Learning-based Convolutional Neural Networks (D-CNNs) has led research to improve the efficiency and performance of barcode recognition in Supply Chain Management (SCM). D-CNNs required real-world images embedded with ground truth data, which is often not readily available in the case of SCM barcode recognition. This study introduces two invented barcode datasets: InventBar and ParcelBar. The datasets contain labeled barcode images with 527 consumer goods and 844 post boxes in the indoor environment. To explore the influential capability of the datasets that affect recognition process, five existing D-CNN algorithms were applied and compared over a set of recently available barcode datasets. To confirm the model’s performance and accuracy, runtime and Mean Average Precision (mAP) were examined based on different IoU thresholds and image transformation settings. The results show that YOLO v5 works best for the ParcelBar in terms of speed and accuracy. The situation is different for the InventBar since Faster R-CNN could allow the model to learn faster with a small drop in accuracy. It is proven that the proposed datasets can be practically utilized for the mainstream D-CNN frameworks. Both are available for developing barcode recognition models and positively affect comparative studies.
Funder
National Research Council of Thailand
Chiang Mai University
College of Arts, Media, and Technology
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
Reference90 articles.
1. Review of Deep Learning: Concepts, CNN Architectures, Challenges, Applications, Future Directions;J. Big Data,2021
2. Zhang, H., Shao, S., Tao, M., Bi, X., and Letaief, K.B. (2022, October 04). Deep Learning-Enabled Semantic Communication Systems with Task-Unaware Transmitter and Dynamic Data. Available online: https://arxiv.org/abs/2205.00271.
3. Deep Reinforcement Learning in Production Systems: A Systematic Literature Review;Int. J. Prod. Res.,2022
4. Deep Learning for Financial Engineering;Comput. Econ.,2022
5. Deep Learning and Internet of Things for Tourist Attraction Recommendations in Smart Cities;Neural Comput. Appl.,2022
Cited by
4 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献