Automatic Container Code Recognition Using MultiDeep Pipeline

Abstract

Identification of license plates on intermodal containers (or containers) while entering and departing from the yard provides a wide range of practical benefits, such as organizing automatic opening of the rising arm barrier at the entrance and exit to and from the site. In addition, automatic container code recognition can also assist in thwarting the entrance of unauthorized vehicles into the territory. With the recent development of AI, this process is preferably automatic. However, the poor quality of images obtained from surveillance cameras might have detrimental effects on AI models. To deal with this problem, we present a pipeline dubbed as MultiDeep system, which combines several state-of-the-art deep learning models for character recognition and computer vision processes to solve problems of real camera data. We have also compared our results with other pipeline models on real data and accomplished fairly positive results. In this paper, without further references, we will only consider intermodal containers when referring to them as containers.

Type
Publication
In Proceedings of 12th International Conference on Computational Collective Intelligence
Duc Q. Nguyen
Duc Q. Nguyen
CS Master Student

My research interests include Generative Models, Graph Representation Learning, and Probabilistic Machine Learning. My application interests include Natural Language Processing, Healthcare, and Education.