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Cited 14 time in webofscience Cited 20 time in scopus
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End-to-end recognition of slab identification numbers using a deep convolutional neural network SCIE SCOPUS

Title
End-to-end recognition of slab identification numbers using a deep convolutional neural network
Authors
Lee, Sang JunYun, Jong PilKoo, GyogwonKim, Sang Woo
Date Issued
2017-09
Publisher
ELSEVIER SCIENCE BV
Abstract
This paper proposes a novel algorithm for the end-to-end recognition of slab identification numbers (SINS). In the steel industry, automatic recognition of an individual product information is important for production management. The recognition of SINs in actual factory scenes is a challenging problem due to complicated background and low-quality of characters. Conventional rule-based algorithms were developed to extract information of SINs, but these methods require engineering knowledge and tedious work for parameter tuning. The proposed algorithm employs a data-driven method to overcome these limitations and to handle the challenges for the recognition of SINs. This paper proposes accumulated response map and model-based score function to effectively use the outputs of a deep convolutional neural network. Experiments were thoroughly conducted for industrial data collected from an actual steelworks to verify the effectiveness of the proposed algorithm. Experiment results demonstrate that simultaneous recognition of entire characters in a SIN by optimizing the model-based score function is more effective for the robust performance compared to separated recognition of individual characters. (C) 2017 Elsevier B.V. All rights reserved.
Keywords
CLASSIFICATION
URI
https://oasis.postech.ac.kr/handle/2014.oak/92036
DOI
10.1016/j.knosys.2017.06.017
ISSN
0950-7051
Article Type
Article
Citation
KNOWLEDGE-BASED SYSTEMS, vol. 132, page. 1 - 10, 2017-09
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김상우KIM, SANG WOO
Dept of Electrical Enginrg
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