Inpainting is a conservation process where damaged, deteriorated, or missing parts of an artwork are filled in to present a complete image.[1] This process is commonly used in image restoration. It can be applied to both physical and digital art mediums such as oil or acrylic paintings, chemical photographic prints, sculptures, or digital images and video.

Image restoration and recolorization using artificial intelligence

With its roots in physical artwork, such as painting and sculpture, traditional inpainting is performed by a trained art conservator who has carefully studied the artwork to determine the mediums and techniques used in the piece, potential risks of treatments, and ethical appropriateness of treatment.

History

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The modern use of inpainting can be traced back to Pietro Edwards (1744–1821), Director of the Restoration of the Public Pictures in Venice, Italy. Using a scientific approach, Edwards focused his restoration efforts on the intentions of the artist.[2]

It was during the 1930 International Conference for the Study of Scientific Methods for the Examination and Preservation of Works of Art, that the modern approach to inpainting was established. Helmut Ruhemann (1891–1973), a German restorer and conservator, led the discussions on the use of inpainting in conservation. Helmut Ruhemann was a leading figure in modernizing restoration and conservation.[3] His greatest contribution to the field of conservation "was his insistence on following the methods of the original painter exactly, and on understanding the painter's artistic intention".[4] After his career of over 40 years as a conservator, Ruhemann published his treatise The Cleaning of Paintings: Problems & Potentialities in 1968. In describing his method, Ruhemann states that "The surface [of the fill] should be slightly lower than that of the surrounding paint to allow for the thickness of the inpainting...Inpainting medium should look and behave like the original medium, but must not darken with age."[5] Cesare Brandi (1906–1988) developed the teoria del restauro, the inpainting approach combining aesthetics and psychology. However, this approach was used primarily by Italian restorers and conservators, with the terminology becoming widespread in the 1990s.[6]

Technological advancements led to new applications of inpainting. Widespread use of digital techniques range from entirely automatic computerized inpainting to tools used to simulate the process manually.[7] Since the mid-1990s, the process of inpainting has evolved to include digital media. More commonly known as image or video interpolation, a form of estimation, digital inpainting includes the use of computer software that relies on sophisticated algorithms to replace lost or corrupted parts of the image data.

Ethics

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In order to preserve the integrity of an original artwork, any inpainting technique or treatment applied to physical or digital work should be reversible or distinguishable from the original content of the artwork.[8] Prior to any treatments, conservators proceed according to the American Institute of Conservation of Historical and Artistic Works.[9]

There are several ethic considerations before Inpainting can be justified. Various deliberation decisions over the ethical appropriateness of the amount and type of inpainting done, resides on many factors. As most conservation treatments, inpainting's ethical questions rest mainly with authenticity, reversibility and documentation.

Any intervention to compensate for loss should be documented in treatment records and reports and should be detectable by common examination methods. Such compensation should be reversible and should not falsely modify the known aesthetic, conceptual, and physical characteristics of the cultural property, especially by removing or obscuring original material.[10]

New technologies and the aesthetic demand for perfect images without imperfections challenge conservators' ethical practices to protect the integrity of originals.[11]

Methods

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Inpainting methods and techniques depend on the desired goal and type of image being treated. Treatments to fill in the gaps are different between physical and digital art. In inpainting, detailed records of the initial state of the images can help with the treatment and replicate the original closer.

Physical inpainting

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Piero della Francesca – Scene after and before restoration. (The Queen of Sheba in) Adoration of the (Holy) Wood.

Inpainting is rooted in the conservation and restoration of paintings. Inpainting can aim to make a visual improvement to the artwork as a whole by repairing missing or damaged parts using methods and materials equivalent to the original artist's work.[12]

Application techniques

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By studying the painting methods of various artists and the composition of paints used historically, conservators are able to restore works very closely to their original visual appearance. The picture as a whole determines how to fill in the gap.

Helmut Ruhemann's inpainting techniques by Jessell have procedures to "preserve" the quality of oil and tempera paintings.[13]

Digital inpainting

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Many programs are able to reconstruct missing or damaged areas of digital photographs and videos. Most widely known for use with digital images is Adobe Photoshop. Given the various abilities of the digital camera and the digitization of old photos, inpainting has become an automatic process that can be performed on digital images. The inpainting techniques can be applied to object removal, text removal, and other automatic modifications of images and videos.

In video special effects, inpainting is usually performed after video matting. They can also be observed in applications like image compression and super-resolution. In photography and cinema, it is used for film restoration to reverse, repair, or mitigate deterioration (e.g., physical damage such as cracks in photographs, scratches and dust spots in film, or chemical damage resulting in image loss; performed infrared cleaning). It can also be used for removing red-eye, the stamped date from photographs, and objects for creative effect. This technique can be used to replace any lost blocks in the coding and transmission of images, for example, in a streaming video. It can also be used to remove logos or watermarks in videos.

 
Digital image restoration and reconstruction

Deep learning neural network-based inpainting can be used for decensoring images.[14] Deep image prior-based techniques can be used for digital image inpainting, where a trained deep learning model is either unavailable or infeasible.

Three main groups of 2D image-inpainting algorithms can be found in the literature. The first one to be noted is structural (or geometric) inpainting, the second one is texture inpainting, the last one is a combination of these two techniques. They use the information of the known or non-destroyed image areas in order to fill the gap, similar to how physical images are restored.

Structural

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Structural or geometric inpainting is used for smooth images that have strong, defined borders.[15] There are many different approaches to geometric inpainting, but they all come from the idea that geometry can be recovered from similar areas or domains. Bertalmio[15] proposed a method of structural inpainting that mimics how conservators address painting restoration. Bertalmio proposed that by progressively transferring similar information from the borders of an inpainting domain inwards, the gap can be filled.[16]

Textural

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While structural/geometric inpainting works to repair smooth images, textural inpainting works best with images that are heavily textured.[17] Texture has a repetitive pattern which means that a missing portion cannot be restored by continuing the level lines into the gap; level lines provide a complete, stable representation of an image.[16] To repair texture in an image, one can combine frequency and spatial domain information to fill in a selected area with a desired texture. This method, while the most simple and very effective, works well when selecting a texture to be in-painted. For a texture that covers a wider area or a larger frame one would have to go through the image segmenting the areas to be in-painted and selecting the corresponding textures from throughout the image; there are programs that can help find the corresponding areas that work in a similar way as 'find and replace' works in a word processor.[18]

Combined structural and textural

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Combined structural and textural inpainting approaches simultaneously try to perform texture- and structure-filling in regions of missing image information. Most parts of an image consist of texture and structure and the boundaries between image regions contain a large amount of structural information. This is the result when blending different textures together. That is why some state-of-the-art methods attempt to combine structural and textural inpainting.

A more traditional method is to use differential equations (such as Laplace's equation) with Dirichlet boundary conditions for continuity so as to create a seemingly seamless fit. This works well if missing information lies within the homogeneous portion of an object area.[19]

Other methods follow isophote directions (in an image, a contour of equal luminance), to do the inpainting.[20]

Model based inpainting follows the Bayesian approach for which missing information is best fitted or estimated from the combination of the models of the underlying images, as well as the image data actually being observed. In deterministic language, this has led to various variational inpainting models.[21]

Manual computer methods include using a clone tool to copy existing parts of the image to restore a damaged texture. Texture synthesis may also be used.[22]

Exemplar-based image inpainting attempts to automate the clone tool process. It fills "holes" in the image by searching for similar patches in a nearby source region of the image, and copying the pixels from the most similar patch into the hole. By performing the fill at the patch level as opposed to the pixel level, the algorithm reduces blurring artifacts caused by prior techniques.[23][24]

See also

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References

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  1. ^ Newman, Richard (2011). Conservation and care of museum collections (1st ed.). MFA publications. p. 29. ISBN 978-0-87846-729-7.
  2. ^ Darrow, E.J. "Pietro Edwards and the restoration of the public pictures of Venice, 1778–1819: necessity introduced these arts". Research Works Archive. University of Washington. Retrieved 29 March 2020.
  3. ^ "Helmut Ruhemann Papers (1930-1979) | Archive | National Gallery, London". www.nationalgallery.org.uk. Retrieved 2024-03-20.
  4. ^ Jessell, Bettina (1977). "HELMUT RUHEMANN'S INPAINTING TECHNIQUES". cool.culturalheritage.org. Retrieved 2024-03-20.
  5. ^ Garland, Patricia, 2011, Chapter 3, Tradition of retouching Practices in America, pp 34–52, in Painting Conservation Catalog, Volume III Inpainting, The Paintings Specialty Group of the American Institute for Conservation, https://www.culturalheritage.org/docs/default-source/resource-guides/painting-conservation-catalog-volume-3-(inpainting).pdf, Retrieved November 2, 2019.
  6. ^ Idelson, Antonia Iaccarino; Severini, Leonardo (18 June 2018). "Inpainting". The Encyclopedia of Archaeological Sciences: 1–4. doi:10.1002/9781119188230.saseas0330. ISBN 9780470674611.
  7. ^ Bertalmio, Marcelo; Sapiro, Guillermo. "Image Inpainting" (PDF). University of Minnesota. Archived from the original (PDF) on 29 March 2020. Retrieved 29 March 2020.
  8. ^ "Inpainting | Museu Nacional d'Art de Catalunya". www.museunacional.cat. 25 March 2014. Retrieved 29 March 2020.
  9. ^ (1994) “AIC Code of Ethics and Guidelines for Practice”[1] https://www.culturalheritage.org/docs/default-source/administration/governance/code-of-ethics-and-guidelines-for-practice.pdf. Retrieved November 3, 2019.
  10. ^ American Institute of Conservation of Historical and Artistic Works. (1994). "AIC Code of Ethics and Guidelines for Practice". https://www.nps.gov/training/tel/Guides/HPS1022_AIC_Code_of_Ethics.pdf. Retrieved March 27, 2020.
  11. ^ Antonio laccarino Idelson. (28 June 2018). "Inpainting". The Encyclopedia of Archaeological Sciences. https://onlinelibrary.wiley.com/doi/full/10.1002/9781119188230.saseas0330 Retrieved March 26, 2020.
  12. ^ Idelson, Antonio; Severini, Leonardo (28 June 2018). "Inpainting". The Encyclopedia of Archeological Sciences: 1–4. https://onlinelibrary.wiley.com/doi/full/10.1002/9781119188230.saseas0330. Retrieved October 30, 2019.
  13. ^ Bettina Jessell. (1977). "Helmut Ruhemann's Inpainting Techniques". Journal of the American Institute for Conservation, JAIC 1977, Vol. 17, Number 1, Article 1 (pp. 08 - 08). Retrieved March 26, 2020.
  14. ^ "This Researcher Created 'DeepCreamPy,' a Machine Learning Algorithm That Uncensors Hentai – Motherboard". 2018-10-31.
  15. ^ a b Bugeau, Aurelie & Marcelo Bertalmio(2011).Combining Texture Synthesis and Diffusion for Image Inpainting.Hal Archives https://hal.archives-ouvertes.fr/hal-00551587/ Retrieved November 1 2019.
  16. ^ a b Cao, Frederic et al. (2011) "Geometrically Guided Exemplar-Based Inpainting." SIAM Journal of Imaging Sciences Vol 4. no.4 pp. 1143–1179. https://perso.telecom-paristech.fr/gousseau/inpaintingSIAM.pdf reterieved November 2 2019.
  17. ^ Bugeau, Aurelie & Marcelo Bertalmio(2011).Combining Texture Synthesis and Diffusion for Image Inpainting.Hal Archives https://hal.archives-ouvertes.fr/hal-00551587/
  18. ^ Bertalmio, Marcelo & Guillermo Saprio."Image Inpainting" https://conservancy.umn.edu/bitstream/handle/11299/3365/1/1655.pdf
  19. ^ Peterson, Ivars (11 May 2002). "Filling in Blanks". Science News. 161 (19): 299–300. doi:10.2307/4013521. JSTOR 4013521.
  20. ^ Bertalmío, M.; Sapiro, G.; Caselles, V.; Ballester, C. (2000). "Image Inpainting". Proceedings of the 27th annual conference on Computer graphics and interactive techniques – SIGGRAPH '00. pp. 417–424. doi:10.1145/344779.344972. ISBN 1581132085. S2CID 308278.
  21. ^ Chan, T. F.; Shen, J. (2001). "Mathematical Models for Local Nontexture Inpainting". SIAM J. Appl. Math. 62 (3): 1019–1043. doi:10.1137/S0036139900368844.
  22. ^ Igehy, Homan; Pereira, Lucas (1997). "Image Replacement through Texture Synthesis". Proceedings of International Conference on Image Processing. Vol. 3. pp. 186–189. doi:10.1109/ICIP.1997.632049. ISBN 0-8186-8183-7. S2CID 5895502.
  23. ^ Criminisi, A.; Perez, P.; Toyama, K. (2003). "Object Removal by Exemplar-Based Inpainting". 2003 IEEE Computer Society Conference on Computer Vision and Pattern Recognition, 2003. Proceedings. Vol. 2. pp. II-721–II-728. doi:10.1109/CVPR.2003.1211538. ISBN 0-7695-1900-8. S2CID 315138.
  24. ^ Lorenzi, L.; Melgani, F.; Mercier, G. (2011). "Inpainting Strategies for Reconstruction of Missing Data in VHR Images". IEEE Geoscience and Remote Sensing Letters. 8 (5): 914–918. Bibcode:2011IGRSL...8..914L. doi:10.1109/LGRS.2011.2141112. S2CID 2119517.
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