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General Information
ISSN: 2301-3699 (Print)
Editor-in-Chief:
Dr. Branislav Vuksanovic,
School of Engineering, University of Portsmouth, Portsmouth, UK
Associate Executive Editor:
Ms. Scene Jiang
DOI:
10.18178/joig
Abstracting/Indexing:
Ulrich's Periodicals Directory, Google Scholar, Crossref, IndexCopernicus, etc.
E-mail questions
or comments to
JOIG Editorial Office
.
Editor-in-Chief
Dr. Branislav Vuksanovic
School of Engineering, University of Portsmouth, Portsmouth, UK
I am very excited to serve as the first Editor-in-Chief of the International Journal of Image and Graphics (JOIG) and hope that the publication can enrich the readers’ experience... [
Read More
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What's New
2021-02-08
Volume 9, No. 1 has been updated online now.
2020-11-05
Volume 8, No. 4 has been updated online now.
2020-08-07
Volume 8, No. 3 has been updated online now.
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2019
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Volume 7, No. 3, September 2019
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Volume 7, No. 3, September 2019
Article#
Article Title & Authors (Volume 7, No. 3, September 2019)
Page
1
Improving Accuracy for Authenticity Inspection of Brand Items Using Logo Region Detection Processing
Ryo Inoue, Tomio Goto, and Satoshi Hirano
68
2
Fatigue Driving Detection System Based on Bayes' Theorem
Li Zhao, Yang Liu, and Nianqiang Li
76
3
Performance Improvement of Face Image Super- Resolution Processing by High-Precision Skin Color Detection
Keigo Kano, Tomio Goto, and Satoshi Hirano
82
4
Intra-operative Tumor Margin Evaluation in Breast-Conserving Surgery with Deep Learning
Yi-Chun Chen, Dar-Ren Chen, Hwa-Koon Wu, and Yu-Len Huang
90
5
Automatic Liver Segmentation Using U-Net with Wasserstein GANs
Yuki Enokiya, Yutaro Iwamoto, Yen-Wei Chen, and Xian-Hua Han
94
6
Design of Machine Vision System for Sugarcane Buds or Rings Detection
Akkaranat Rattanaphongphak and Wanwanut Boongsood
102
7
Effectiveness of Pseudo 3D Feature Learning for Spinal Segmentation by CNN with U-Net Architecture
Naofumi Shigeta, Mikoto Kamata, and Masayuki Kikuchi
107