ARIN: Adaptive Resampling and Instance Normalization for Robust Blind Inpainting of Dunhuang Cave Paintings

Schmidt A, Madhu P, Maier A, Christlein V, Kosti RV (2022)


Publication Type: Conference contribution

Publication year: 2022

Event location: Salzburg AT

DOI: 10.1109/IPTA54936.2022.9784144

Abstract

Image enhancement algorithms are very useful for real world computer vision tasks where image resolution is often physically limited by the sensor size. While state-of-the-art deep neural networks show impressive results for image enhancement, they often struggle to enhance real-world images. In this work, we tackle a real-world setting: inpainting of images from Dunhuang caves. The Dunhuang dataset consists of murals, half of which suffer from corrosion and aging. These murals feature a range of rich content, such as Buddha statues, bodhisattvas, sponsors, architecture, dance, music, and decorative patterns designed by different artists spanning ten centuries, which makes manual restoration challenging. We modify two different existing methods (CAR, HINet) that are based upon state-of-the-art (SOTA) super resolution and deblurring networks. We show that those can successfully inpaint and enhance these deteriorated cave paintings. We further show that a novel combination of CAR and HINet, resulting in our proposed inpainting network (ARIN), is very robust to external noise, especially Gaussian noise. To this end, we present a quantitative and qualitative comparison of our proposed approach with existing SOTA networks and winners of the Dunhuang challenge. One of the proposed methods (HINet) represents the new state of the art and outperforms the 1st place of the Dunhuang Challenge, while our combination ARIN, which is robust to noise, is comparable to the 1st place. We also present and discuss qualitative results showing the impact of our method for inpainting on Dunhuang cave images.

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How to cite

APA:

Schmidt, A., Madhu, P., Maier, A., Christlein, V., & Kosti, R.V. (2022). ARIN: Adaptive Resampling and Instance Normalization for Robust Blind Inpainting of Dunhuang Cave Paintings. In IEEE (Eds.), Proceedings of the 2022 Eleventh International Conference on Image Processing Theory, Tools and Applications (IPTA). Salzburg, AT.

MLA:

Schmidt, Alexander, et al. "ARIN: Adaptive Resampling and Instance Normalization for Robust Blind Inpainting of Dunhuang Cave Paintings." Proceedings of the 2022 Eleventh International Conference on Image Processing Theory, Tools and Applications (IPTA), Salzburg Ed. IEEE, 2022.

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