[go: up one dir, main page]
More Web Proxy on the site http://driver.im/ skip to main content
research-article

The method of repairing OHE damaged ancient painted murals based on machine vision

Published: 01 January 2022 Publication History

Abstract

Traditional mural repair methods only observe the texture of murals when segmenting the repair area, but ignore the extraction of a mural damage data, resulting in incomplete damage crack information. For this reason, the method of repairing the damaged murals based on machine vision is studied. Using machine vision, it can get two-dimensional image of a mural, preprocess the image, extract the damaged data of a mural, and then divide the repair area and repair degree index. According to different types of damage, it can choose the corresponding repair methods to achieve the repair of damaged mural. The results show: Compared with the OPTICS-based unsupervised method and the machine vision for orchard navigation method, the number of repair points and repair cracks extracted by the proposed method is more than that of the two traditional methods, which can more accurately and comprehensively extract the repair information of murals.

References

[1]
Li P, Sun MJ, Wang Z, Chai BL. OPTICS-based unsupervised method for flaking degree evaluation on the murals in Mogao Grottoes. Scientific Reports. 2018; 8(1): 1967-1974.
[2]
Josiah R, Julie C, Duke MB. Machine vision for orchard navigation. Computers in Industry. 2018; 98: 165-171.
[3]
Liao XF. Simulation of adaptive optimization and repair method for damaged image loss region. Computer Simulation. 2019; 36(6): 388-392.
[4]
Lou XX, Tang XH, Zhang Y. Sparsity image inpainting algorithm based on similar patch group. Journal of Image and Graphics. 2019; 24(7): 1055-1066.
[5]
Madhavaraju J, Saucedo-Samaniego JC, Löser H, EspinozaMaldonado IG, Solari L, Monreal R, GrijalvaNoriega FJ, JaquesAyala C. Detrital zircon record of Mesozoic volcanic arcs in the Lower Cretaceous Mural Limestone, northwestern Mexico. Geological Journal. 2018; 54(4): 2621-2645.
[6]
Elhagrassy AF. Isolation and characterization of actinomycetes from Mural paintings of Snu-Sert-Ankh tomb, their antimicrobial activity, and their biodeterioration. Microbiological Research. 2018; 216: 47-55.
[7]
Giulia C, Flavia B, Martina F, Doretta M, Paolo V. Changes in biodeterioration patterns of mural paintings: Multi-temporal mapping for a preventive conservation strategy in the Crypt of the Original Sin (Matera, Italy). Journal of Cultural Heritage. 2019; 40: 59-68.
[8]
Morillas H, Maguregui M, Bastante J, Huallparimachi G, Marcaida I, García-Florentino C, Astete F, Madariaga JM. Characterization of the Inkaterra rock shelter paintings exposed to tropical climate (Machupicchu, Peru). Microchemical Journal. 2018; 137: 422-428.
[9]
Tamburini D, Martin de Fonjaudran C, Verri G, Accorsi G, Acocella A, Zerbetto F, Rava A, Whittaker S, Saunders D, Cather S. New insights into the composition of Indian yellow and its use in a Rajasthani wall painting. Microchemical Journal. 2018; 137: 238-249.
[10]
Ranalli G, Zanardini E, Rampazzi L, Corti C, Andreotti A, Colombini MP, Bosch-Roig P, Lustrato G, Giantomassi C, Zari D, Virilli P. Onsite advanced biocleaning system for historical wall paintings using new agar-gauze bacteria gel. Journal of Applied Microbiology. 2019; 126(6): 1785-1796.
[11]
Mateos LD, Cosano D, Esquivel D, Osuna S, Jiménez-Sanchidrián C, Ruiz JR. Use of Raman microspectroscopy to characterize wallpaintings in Cerro de las Cabezas and the Roman villa of Priego de Cordoba (Spain). Vibrational Spectroscopy. 2018; 96: 143-149.
[12]
Tatjana B. Buddhist wall paintings at Nako Monastery, North India: Changing of the technology throughout centuries. Studies in Conservation. 2018; 63(3): 171-188.
[13]
Alzarok H, Fletcher S, Longstaff AP. Survey of the current practices and challenges for vision systems in industrial robotic grasping and assembly applications. Advances in Industrial Engineering and Management. 2020; 9(1): 19-30.
[14]
Tamburini D, Martin de Fonjaudran C, Verri G, Accorsi G, Acocella A, Zerbetto F, Rava A, Whittaker S, Saunders D, Cather S. New insights into the composition of Indian yellow and its use in a Rajasthani wall painting. Microchemical Journal. 2018; 137: 238-249.
[15]
Ziȩba-Palus J, Kowalski R. The influence of the type of substrate on the possibility of spray paint identification for forensic purposes. Vibrational Spectroscopy. 2018; 95: 57-61.
[16]
Al Huseini A, Kasi R, Shafaamri A, Wonnie Ma IA, Subramaniam R. Study of the physical and electrochemical properties of hybrid paint system based on zinc-rich primer for mild steel protection. Pigment and Resin Technology. 2020; 49(1): 33-40.
[17]
Gomes V, Dionísio A, Santiago Pozo-Antonio J, Rivas T, Rami A. Mechanical and laser cleaning of spray graffiti paints on a granite subjected to a SO 2-rich atmosphere. Construction and Building Materials. 2018; 188: 621-632.
[18]
Wang H. Deep drainage detection system for inland vessels based on machine vision. Jordan Journal of Mechanical and Industrial Engineering. 2020; 14(1): 119-128.
[19]
Grafia AL, Martini RE, Barbosa SE. Spray process to styrene grafting onto polyethylene film surface for paintability enhancement. Progress in Organic Coatings. 2018; 117: 91-101.
[20]
Ollier M, Talle V, Brisset AL, Bihan ZL, Duerr S, Lemmens M, Goudemand E, Robert O, Hilbert JL, Buerstmayr H. Whitened kernel surface: A fast and reliable method for assessing Fusarium severity on cereal grains by digital picture analysis. Plant Breeding. 2019; 138(1): 69-81.
[21]
Wang ZJ, Tian GY, Meo M, Ciampa F. Image processing based quantitative damage evaluation in composites with long pulse thermography. NDT and E International. 2018; 99: 93-104.
[22]
Navas VMT, Buljac A, Hild F, Morgeneyer T, Helfen L, Bernacki M, Bouchard PO. A comparative study of image segmentation methods for micromechanical simulations of ductile damage. Computational Materials Science. 2019; 159: 43-65.
[23]
Liu LS, He DW, Zheng JS, Ma Y, Huang J, Fan JF, Wei XY, Yao JX, Emilia BV, Jain LC. Design and implementation of intelligent tracking car based on machine vision. Journal of Intelligent and Fuzzy Systems. 2020; 38(5): 5799-5810.

Index Terms

  1. The method of repairing OHE damaged ancient painted murals based on machine vision
            Index terms have been assigned to the content through auto-classification.

            Recommendations

            Comments

            Please enable JavaScript to view thecomments powered by Disqus.

            Information & Contributors

            Information

            Published In

            cover image Journal of Computational Methods in Sciences and Engineering
            Journal of Computational Methods in Sciences and Engineering  Volume 22, Issue 1
            2022
            342 pages

            Publisher

            IOS Press

            Netherlands

            Publication History

            Published: 01 January 2022

            Author Tags

            1. Machine vision
            2. painted mural
            3. repair method
            4. damaged image
            5. painting grouting

            Qualifiers

            • Research-article

            Contributors

            Other Metrics

            Bibliometrics & Citations

            Bibliometrics

            Article Metrics

            • 0
              Total Citations
            • 0
              Total Downloads
            • Downloads (Last 12 months)0
            • Downloads (Last 6 weeks)0
            Reflects downloads up to 18 Jan 2025

            Other Metrics

            Citations

            View Options

            View options

            Media

            Figures

            Other

            Tables

            Share

            Share

            Share this Publication link

            Share on social media