Abstract
AbstractIndia has its unique and rich cultural heritage. One such uniqueness in India is ancient paintings. Especially in South India, Tanjore paintings are very popular. These paintings are made during 1010 AD with vibrant colours, gold, silver and precious stones. These paintings are the memorabilia of the great Chola kingdom. These paintings can be seen in great Brahadeeshwara Temple walls till now. Damages to these paintings happen due to varying environmental conditions and rituals followed throughout the year. Hence, preserving these heritages could be an additional source in National Cultural Museum and cultural libraries. This paper focuses towards the restoration of such ancient painting images that can be digitized and archived for the future use of aesthete. The painting images are preprocessed using Weiner filter for removing the background noises since its PSNR value is higher than Gaussian and Median filters. The preprocessed image is then applied to restoration algorithm. Two types of restoration algorithm is attempted, image segmentation and in-painting algorithm. The degraded image was restored efficiently with in-painting algorithm than segmentation algorithm. Further research can be focused towards automatic adaptive selection of patch based on the nature of images. From the results it is observed that with in-painting algorithm the image restoration is better than the segmentation algorithm for degraded painting images.
Funder
Indian Council of Social Science Research
Publisher
Springer Science and Business Media LLC
Subject
Archeology,Archeology,Conservation
Reference18 articles.
1. Zeng Y, Gong Y. Nearest neighbor based digital restoration of damaged ancient Chinese paintings. In: 23rd international conference on digital signal processing, Shanghai, China; 2018.
2. Wei S. Research on hierarchical image restoration of Chinese Painting. In: The 9th international conference on computer science & education (ICCSE 2014) August 22–24, 2014. Vancouver, Canada.
3. Giakoumis I, Nikolaidis N, Pitas I. Digital image processing techniques for the detection and removal of cracks in digitized paintings. IEEE Trans Image Process. 2006;15(1):178–88.
4. Desai SD, Kavita V. Horadi, Navaneet P, Niriksha B, Siddeshvar V. User intervention based detection & removal of cracks from digitized paintings. In: 2014 fifth international conference on signals and image processing; 2013. https://doi.org/10.1109/ICSIP.2014.7
5. Jmal M, Souidene W, Attia R. Efficient cultural heritage image restoration with nonuniform illumination enhancement. J Electron Imaging. 2017;26(1): 011020. https://doi.org/10.1117/1.JEI.26.1.011020.
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献