Investigating low-delay deep learning-based cultural image reconstruction

被引:1
作者
Abdelhak Belhi
Abdulaziz Khalid Al-Ali
Abdelaziz Bouras
Sebti Foufou
Xi Yu
Haiqing Zhang
机构
[1] Qatar University,CSE, College of Engineering
[2] Université Lumière Lyon 2,DISP Laboratory
[3] Université de Bourgogne,Le2i Lab
[4] Chengdu University,School of Information Science and Engineering
[5] Chengdu University of Information Technology,undefined
来源
Journal of Real-Time Image Processing | 2020年 / 17卷
关键词
Digital heritage; Image reconstruction; Low-delay reconstruction; Image inpainting; Deep learning; Image clustering;
D O I
暂无
中图分类号
学科分类号
摘要
Numerous cultural assets host a great historical and moral value, but due to their degradation, this value is heavily affected as their attractiveness is lost. One of the solutions that most heritage organizations and museums currently choose is to leverage the knowledge of art and history experts in addition to curators to recover and restore the damaged assets. This process is labor-intensive, expensive and more often results in just an assumption over the damaged or missing region. In this work, we tackle the issue of completing missing regions in artwork through advanced deep learning and image reconstruction (inpainting) techniques. Following our analysis of different image completion and reconstruction approaches, we noticed that these methods suffer from various limitations such as lengthy processing times and hard generalization when trained with multiple visual contexts. Most of the existing learning-based image completion and reconstruction techniques are trained on large datasets with the objective of retrieving the original data distribution of the training samples. However, this distribution becomes more complex when the training data is diverse making the training process difficult and the reconstruction inefficient. Through this paper, we present a clustering-based low-delay image completion and reconstruction approach which combines supervised and unsupervised learning to address the highlighted issues. We compare our technique to the current state of the art using a real-world dataset of artwork collected from various cultural institutions. Our approach is evaluated using statistical methods and a surveyed audience to better interpret our results objectively and subjectively.
引用
收藏
页码:1911 / 1926
页数:15
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