MONTEAN Framework: A Magnificent Outstanding Native-Thai and Ecclesiastical Art Network

Pakpoom Mookdarsanit, Montean Rattanasiriwongwut

Abstract


Thai-ecclesiastical arts (also called "Thai-temple arts") are significantly attractive from many travelers. From the statistics, there are a total of 40,717 ecclesiastical temples that are located in Thailand. Many travelers could not go conveniently to these places because of the misremembering of their names and locations that made the country missed out a lot of income. In this paper, we design a novel framework as a knowledge-based system for travelers to find the name and location of an unknown Thai-ecclesiastical art from a single image, named "Magnificent Outstanding Native-Thai and Ecclesiastical Art Network (MONTEAN)". MONTEAN is the first groundwork in the field of information technology that integrally couples image matching and Thai-ecclesiastical arts together. From the experimental results, MONTEAN provided the high correctness in terms of accuracy, recall and precision as 0.91, 0.93 and 0.89, respectively.

Full Text:

PDF

References


Department of Tourism Thailand, “Visitor Statistics 1998–2014,” [Online]. Available: http://tourism2.tourism.go.th/home/list

content/11/221/276. [Accessed: 18 March 2017].

T. Rochelle, Travel & Tourism, Economic Impact 2015. World Travel & Tourism Council, London. 2015

Dhammathai, “Theravada Buddhism Information Network,” [Online]. Available: http://www.dhammathai.org/watthai/

watthai.php. [Accessed: 18 March 2017].

P. Mookdarsanit and M. Ketcham, “Image Location Estimation of well-known Places from Multi-source based Information,” The 11th International Symposium on Natural Language Processing, 2016, pp. 75.

X. Qian, Y. Zhao and J. Han, "Image Location Estimation by Salient Region Matching," in IEEE Transactions on Image Processing, vol. 24, no. 11, pp. 4348-4358, Nov. 2015.

P. Mookdarsanit and M. Rattanasiriwongwut, "GPS Determination of Thai-temple Arts from a Single Photo," The 11th International Conference on Applied Computer Technology and Information Systems, Bangkok, January 2017, pp. 42-47.

L. Ploywattanawong, “The Wisdom Cultural Heritage Information Systems of Suphan Buri,” International Journal of Applied Computer Technology and Information Systems (IJACTIS), vol.6, no.1, pp.7-10, 2016.

L. Soimart and M. Ketcham, “The Segmentation of Satellite Image Using Transport Mean-shift Algorithm,” 13th International Conference on IT Applications and Management (ITAM-13), 2015, pp. 124-128.

L. Soimart and M. Ketcham, “Hybrid of Pixel-based and Region-based Segmentation for Geology Exploration from Multi-spectral Remote Sensing,” The 11th International Symposium on Natural Language Processing, 2016, pp. 74.

L. Soimart and P. Mookdarsanit, “Ingredients Estimation and Recommendation of Thai-foods,” The 8th International Science, Social Science, Engineering and Energgy Conference (selected to SNRUJST publication), March 2017, pp. 43.

P. Mookdarsanit, L. Soimart, M. Ketcham and N. Hnoohom, "Detecting Image Forgery Using XOR and Determinant of Pixels for Image Forensics," 2015 11th IEEE International Conference on Signal-Image Technology & Internet-Based Systems, 2015, pp. 613-616.

L. Deng and D. Yu, “Deep Learning: Methods and Applications,” Foundations and Trends® in Signal Processing, vol. 7, no. 3-4, pp. 197-387, 2014.

F. Y. Wang et al., "Where does AlphaGo go: from church-turing thesis to AlphaGo thesis and beyond," IEEE/CAA Journal of Automatica Sinica, vol. 3, no. 2, pp. 113-120, April 2016.

D. Silver et al., “Mastering the game of Go with deep neural networks and tree search,” Nature International Weekly Journal of Science, vol. 529, no. 7578, pp. 484-489, 2016.

L. Soimart and P. Mookdarsanit, “An Admission Recommendation of High-school Students using Apriori Algorithm,” The 6th International Conference on Sciences and Social Sciences, 2016.

L. Soimart and P. Pongchareon, “Multi-row Machine Layout Design using Aritificial Bee Colony,” The International Conference on Economics and Business Information, Bangkok, Thailand, 2011.

J. Tao, S. Ghaffarzadegan, L. Chen and K. Zechner, "Exploring deep learning architectures for automatically grading non-native spontaneous speech," 2016 IEEE International Conference on Acoustics, Speech and Signal Processing, 2016, pp. 6140-6144.

Z. H. Ling et al., "Deep Learning for Acoustic Modeling in Parametric Speech Generation: A systematic review of existing techniques and future trends," IEEE Signal Processing Magazine, vol. 32, no. 3, pp. 35-52, May 2015.

O. Koller, H. Ney and R. Bowden, "Deep Learning of Mouth Shapes for Sign Language," 2015 IEEE International Conference on Computer Vision Workshop (ICCVW), 2015, pp. 477-483.

Y. He, S. Xiang, C. Kang, J. Wang and C. Pan, "Cross-Modal Retrieval via Deep and Bidirectional Representation Learning," IEEE Transactions on Multimedia, vol. 18, no. 7, pp. 1363-1377, July 2016.

R. Srivastava, J. Cheng, D. W. K. Wong and J. Liu, "Using deep learning for robustness to parapapillary atrophy in optic disc segmentation," 2015 IEEE 12th International Symposium on Biomedical Imaging (ISBI), New York, NY, 2015, pp. 768-771.

L. Soimart and P. Mookdarsanit, “Gender Estimation of a

Portrait: Asian Facial-significance Framework,” The 6th International Conference on Sciences and Social Sciences, 2016.

Q. Zou, L. Ni, T. Zhang and Q. Wang, "Deep Learning Based Feature Selection for Remote Sensing Scene Classification," IEEE Geoscience and Remote Sensing Letters, vol. 12, no. 11, pp. 2321-2325, Nov. 2015.

L. Soimart and M. Ketcham, “An Efficient Algorithm for

Earth Surface Interpretation from Satellite Imagery,” Engineering Journal, vol.20, no.5, pp.215-228, October, 2016.

P. Mookdarsanit and M. Rattanasiriwongwut, “Location Estimation of a Photo: A Geo-signature MapReduce Workflow,” Engineering Journal, in press.

L. Soimart and P. Mookdarsanit, “Multi-factor Authentication Protocol for Information Accessibility in Flash Drive,” The 9th Applied Computer Technology and Information Systems,

Nakhon Pathom, February 2016, pp. 10-13.

P. Mookdarsanit and S. Gertphol, "Light-weight operation of a failover system for Cloud computing," 2013 IEEE 5th International Conference on Knowledge and Smart Technology, Chonburi, Thailand, 2013, pp. 42-46.


Refbacks

  • There are currently no refbacks.