利用U-Net结构中的感知损失对传统图案纺织品进行语义喷漆

C. Stoean, N. Bačanin, R. Stoean, L. Ionescu, C. Alecsa, M. Hotoleanu, Miguel A. Atencia Ruiz, G. Joya
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引用次数: 1

摘要

当人们看到博物馆里展出的数百年或数千年的文物时,它的外观似乎已经被几个世纪所触动,这给人留下了深刻的印象。它的修复工作由一个多学科专家小组负责,并经历了一系列复杂的程序。为此,可以支持为非常退化的历史项目决定最适合视觉的修复方法的计算方法将有助于作为修复者的第二个客观意见。因此,本论文试图提出一种U-Net方法,具有传统罗马尼亚背心语义涂装的感知损失。从克拉约瓦的奥尔特尼亚博物馆(Oltenia Museum)的藏品中拍摄的图像,以及来自互联网的服装图像,都被提供给了深度学习模型。对损坏部分进行涂漆的结果数值误差足够低,但是视觉相似性仍然需要通过考虑进一步微调的可能性来改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Using Perceptual Loss within the U-Net Architecture for the Semantic Inpainting of Textile Artefacts with Traditional Motifs
It is impressive when one gets to see a hundreds or thousands years old artefact exhibited in the museum, whose appearance seems to have been untouched by centuries. Its restoration had been in the hands of a multidisciplinary team of experts and it had undergone a series of complex procedures. To this end, computational approaches that can support in deciding the most visually appropriate inpainting for very degraded historical items would be helpful as a second objective opinion for the restorers. The present paper thus attempts to put forward a U-Net approach with a perceptual loss for the semantic inpainting of traditional Romanian vests. Images taken of pieces from the collection of the Oltenia Museum in Craiova, along with such images with garments from the Internet, have been given to the deep learning model. The resulting numerical error for inpainting the corrupted parts is adequately low, however the visual similarity still has to be improved by considering further possibilities for finer tuning.
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