Cargando…

Enhancement and Restoration of Scratched Murals Based on Hyperspectral Imaging—A Case Study of Murals in the Baoguang Hall of Qutan Temple, Qinghai, China

Environmental changes and human activities have caused serious degradation of murals around the world. Scratches are one of the most common issues in these damaged murals. We propose a new method for virtually enhancing and removing scratches from murals; which can provide an auxiliary reference and...

Descripción completa

Detalles Bibliográficos
Autores principales: Sun, Pengyu, Hou, Miaole, Lyu, Shuqiang, Wang, Wanfu, Li, Shuyang, Mao, Jincheng, Li, Songnian
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9782035/
https://www.ncbi.nlm.nih.gov/pubmed/36560152
http://dx.doi.org/10.3390/s22249780
_version_ 1784857235681181696
author Sun, Pengyu
Hou, Miaole
Lyu, Shuqiang
Wang, Wanfu
Li, Shuyang
Mao, Jincheng
Li, Songnian
author_facet Sun, Pengyu
Hou, Miaole
Lyu, Shuqiang
Wang, Wanfu
Li, Shuyang
Mao, Jincheng
Li, Songnian
author_sort Sun, Pengyu
collection PubMed
description Environmental changes and human activities have caused serious degradation of murals around the world. Scratches are one of the most common issues in these damaged murals. We propose a new method for virtually enhancing and removing scratches from murals; which can provide an auxiliary reference and support for actual restoration. First, principal component analysis (PCA) was performed on the hyperspectral data of a mural after reflectance correction, and high-pass filtering was performed on the selected first principal component image. Principal component fusion was used to replace the original first principal component with a high-pass filtered first principal component image, which was then inverse PCA transformed with the other original principal component images to obtain an enhanced hyperspectral image. The linear information in the mural was therefore enhanced, and the differences between the scratches and background improved. Second, the enhanced hyperspectral image of the mural was synthesized as a true colour image and converted to the HSV colour space. The light brightness component of the image was estimated using the multi-scale Gaussian function and corrected with a 2D gamma function, thus solving the problem of localised darkness in the murals. Finally, the enhanced mural images were applied as input to the triplet domain translation network pretrained model. The local branches in the translation network perform overall noise smoothing and colour recovery of the mural, while the partial nonlocal block is used to extract the information from the scratches. The mapping process was learned in the hidden space for virtual removal of the scratches. In addition, we added a Butterworth high-pass filter at the end of the network to generate the final restoration result of the mural with a clearer visual effect and richer high-frequency information. We verified and validated these methods for murals in the Baoguang Hall of Qutan Temple. The results show that the proposed method outperforms the restoration results of the total variation (TV) model, curvature-driven diffusion (CDD) model, and Criminisi algorithm. Moreover, the proposed combined method produces better recovery results and improves the visual richness, readability, and artistic expression of the murals compared with direct recovery using a triple domain translation network.
format Online
Article
Text
id pubmed-9782035
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-97820352022-12-24 Enhancement and Restoration of Scratched Murals Based on Hyperspectral Imaging—A Case Study of Murals in the Baoguang Hall of Qutan Temple, Qinghai, China Sun, Pengyu Hou, Miaole Lyu, Shuqiang Wang, Wanfu Li, Shuyang Mao, Jincheng Li, Songnian Sensors (Basel) Article Environmental changes and human activities have caused serious degradation of murals around the world. Scratches are one of the most common issues in these damaged murals. We propose a new method for virtually enhancing and removing scratches from murals; which can provide an auxiliary reference and support for actual restoration. First, principal component analysis (PCA) was performed on the hyperspectral data of a mural after reflectance correction, and high-pass filtering was performed on the selected first principal component image. Principal component fusion was used to replace the original first principal component with a high-pass filtered first principal component image, which was then inverse PCA transformed with the other original principal component images to obtain an enhanced hyperspectral image. The linear information in the mural was therefore enhanced, and the differences between the scratches and background improved. Second, the enhanced hyperspectral image of the mural was synthesized as a true colour image and converted to the HSV colour space. The light brightness component of the image was estimated using the multi-scale Gaussian function and corrected with a 2D gamma function, thus solving the problem of localised darkness in the murals. Finally, the enhanced mural images were applied as input to the triplet domain translation network pretrained model. The local branches in the translation network perform overall noise smoothing and colour recovery of the mural, while the partial nonlocal block is used to extract the information from the scratches. The mapping process was learned in the hidden space for virtual removal of the scratches. In addition, we added a Butterworth high-pass filter at the end of the network to generate the final restoration result of the mural with a clearer visual effect and richer high-frequency information. We verified and validated these methods for murals in the Baoguang Hall of Qutan Temple. The results show that the proposed method outperforms the restoration results of the total variation (TV) model, curvature-driven diffusion (CDD) model, and Criminisi algorithm. Moreover, the proposed combined method produces better recovery results and improves the visual richness, readability, and artistic expression of the murals compared with direct recovery using a triple domain translation network. MDPI 2022-12-13 /pmc/articles/PMC9782035/ /pubmed/36560152 http://dx.doi.org/10.3390/s22249780 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Sun, Pengyu
Hou, Miaole
Lyu, Shuqiang
Wang, Wanfu
Li, Shuyang
Mao, Jincheng
Li, Songnian
Enhancement and Restoration of Scratched Murals Based on Hyperspectral Imaging—A Case Study of Murals in the Baoguang Hall of Qutan Temple, Qinghai, China
title Enhancement and Restoration of Scratched Murals Based on Hyperspectral Imaging—A Case Study of Murals in the Baoguang Hall of Qutan Temple, Qinghai, China
title_full Enhancement and Restoration of Scratched Murals Based on Hyperspectral Imaging—A Case Study of Murals in the Baoguang Hall of Qutan Temple, Qinghai, China
title_fullStr Enhancement and Restoration of Scratched Murals Based on Hyperspectral Imaging—A Case Study of Murals in the Baoguang Hall of Qutan Temple, Qinghai, China
title_full_unstemmed Enhancement and Restoration of Scratched Murals Based on Hyperspectral Imaging—A Case Study of Murals in the Baoguang Hall of Qutan Temple, Qinghai, China
title_short Enhancement and Restoration of Scratched Murals Based on Hyperspectral Imaging—A Case Study of Murals in the Baoguang Hall of Qutan Temple, Qinghai, China
title_sort enhancement and restoration of scratched murals based on hyperspectral imaging—a case study of murals in the baoguang hall of qutan temple, qinghai, china
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9782035/
https://www.ncbi.nlm.nih.gov/pubmed/36560152
http://dx.doi.org/10.3390/s22249780
work_keys_str_mv AT sunpengyu enhancementandrestorationofscratchedmuralsbasedonhyperspectralimagingacasestudyofmuralsinthebaoguanghallofqutantempleqinghaichina
AT houmiaole enhancementandrestorationofscratchedmuralsbasedonhyperspectralimagingacasestudyofmuralsinthebaoguanghallofqutantempleqinghaichina
AT lyushuqiang enhancementandrestorationofscratchedmuralsbasedonhyperspectralimagingacasestudyofmuralsinthebaoguanghallofqutantempleqinghaichina
AT wangwanfu enhancementandrestorationofscratchedmuralsbasedonhyperspectralimagingacasestudyofmuralsinthebaoguanghallofqutantempleqinghaichina
AT lishuyang enhancementandrestorationofscratchedmuralsbasedonhyperspectralimagingacasestudyofmuralsinthebaoguanghallofqutantempleqinghaichina
AT maojincheng enhancementandrestorationofscratchedmuralsbasedonhyperspectralimagingacasestudyofmuralsinthebaoguanghallofqutantempleqinghaichina
AT lisongnian enhancementandrestorationofscratchedmuralsbasedonhyperspectralimagingacasestudyofmuralsinthebaoguanghallofqutantempleqinghaichina