Generating modern persian carpet map by style-transfer

Publish Year: 1402
نوع سند: مقاله ژورنالی
زبان: English
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شناسه ملی سند علمی:

JR_KJMMRC-13-1_003

تاریخ نمایه سازی: 28 آبان 1402

Abstract:

Today, the great performance of Deep Neural Networks(DNN) has been proven in various fields. One of its most attractive applications is to produce artistic designs. A carpet that is known as a piece of art is one of the most important items in a house, which has many enthusiasts all over the world. The first stage of producing a carpet is to prepare its map, which is a difficult, time-consuming, and expensive task. In this research work, our purpose is to use DNN for generating a Modern Persian Carpet Map. To reach this aim, three different DNN style transfer methods are proposed and compared against each other. In the proposed methods, the Style-Swap method is utilized to create the initial carpet map, and in the following, to generate more diverse designs, methods Clip-Styler, Gatys, and Style-Swap are used separately. In addition, some methods are examined and introduced for coloring the produced carpet maps. The designed maps are evaluated via the results of filled questionnaires where the outcomes of user evaluations confirm the popularity of generated carpet maps. Eventually, for the first time, intelligent methods are used in producing carpet maps, and it reduces human intervention. The proposed methods can successfully produce diverse carpet designs, and at a higher speed than traditional ways.

Authors

Dorsa Rahmatian

Department of Computer Engineering, Shahid Bahonar University of Kerman, Kerman, Iran

Monireh Moshavash

Department of Computer Engineering, Shahid Bahonar University of Kerman, Kerman, Iran

Mahdi Eftekhari

Department of Computer Engineering, Shahid Bahonar University of Kerman, Kerman, Iran

Kamran Hoseinkhani

Department of Carpet, Saba Faculty of Art and Architecture, Shahid Bahonar University of Kerman, Kerman, Iran

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  • L. A. Gatys, A. S. Ecker, and M. Bethge, Image ...
  • N. Ashikhmin, \Fast texture transfer," IEEE computer Graphics and Applications, ...
  • C. Zhao, \A survey on image style transfer approaches using ...
  • L. Sheng, Z. Lin, J. Shao, and X.Wang, Avatar-net: Multi-scale ...
  • S. Gu, C. Chen, J. Liao, and L. Yuan, Arbitrary ...
  • C. Li and M. Wand, Combining markov random elds and ...
  • Y. Li, C. Fang, J. Yang, Z. Wang, X. Lu, ...
  • X. Li, S. Liu, J. Kautz, and M.-H. Yang, Learning ...
  • X. Huang and S. Belongie, Arbitrary style transfer in real-time ...
  • Y. Zhang, F. Tang, W. Dong, H. Huang, C. Ma, ...
  • T. Q. Chen and M. Schmidt, Fast patch-based style transfer ...
  • Y. Zhang, C. Fang, Y. Wang, Z. Wang, Z. Lin, ...
  • M. A , A. Abuolaim, M. Hussien, M. A. Brubaker, ...
  • G. Kwon and J. C. Ye, Clipstyler: Image style transfer ...
  • Z.-S. Liu, L.-W. Wang, W.-C. Siu, and V. Kalogeiton, Name ...
  • A. Radford, J. W. Kim, C. Hallacy, A. Ramesh, G. ...
  • T. Karras, S. Laine, and T. Aila, A style-based generator ...
  • J.-Y. Zhu, T. Park, P. Isola, and A. A. Efros, ...
  • H. Chang, O. Fried, Y. Liu, S. DiVerdi, and A. ...
  • R. Gal, O. Patashnik, H. Maron, G. Chechik, and D. ...
  • T.-Y. Lin, M. Maire, S. Belongie, J. Hays, P. Perona, ...
  • R. Krishna, Y. Zhu, O. Groth, J. Johnson, K. Hata, ...
  • B. Thomee, D. A. Shamma, G. Friedland, B. Elizalde, K. ...
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