Assisting classical paintings restoration: efficient paint loss detection and descriptor-based inpainting using shared pretraining

Laurens Meeus, Shaoguang Huang, Nina Žižakić, Xianghui Xie, Bart Devolder, Hélène Dubois, M. Martens, A. Pižurica
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引用次数: 4

Abstract

In the restoration process of classical paintings, one of the tasks is to map paint loss for documentation and analysing purposes. Because this is such a sizable and tedious job automatic techniques are highly on demand. The currently available tools allow only rough mapping of the paint loss areas while still requiring considerable manual work. We develop here a learning method for paint loss detection that makes use of multimodal image acquisitions and we apply it within the current restoration of the Ghent Altarpiece. Our neural network architecture is inspired by a multiscale convolutional neural network known as U-Net. In our proposed model, the downsampling of the pooling layers is omitted to enforce translation invariance and the convolutional layers are replaced with dilated convolutions. The dilated convolutions lead to denser computations and improved classification accuracy. Moreover, the proposed method is designed such to make use of multimodal data, which are nowadays routinely acquired during the restoration of master paintings, and which allow more accurate detection of features of interest, including paint losses. Our focus is on developing a robust approach with minimal user-interference. Adequate transfer learning is here crucial in order to extend the applicability of pre-trained models to the paintings that were not included in the training set, with only modest additional re-training. We introduce a pre-training strategy based on a multimodal, convolutional autoencoder and we fine-tune the model when applying it to other paintings. We evaluate the results by comparing the detected paint loss maps to manual expert annotations and also by running virtual inpainting based on the detected paint losses and comparing the virtually inpainted results with the actual physical restorations. The results indicate clearly the efficacy of the proposed method and its potential to assist in the art conservation and restoration processes.
协助古典绘画修复:使用共享预训练的高效油漆损失检测和基于描述符的绘画
在古典绘画的修复过程中,其中一项任务是绘制油漆损失图,以便记录和分析。因为这是一个相当大的和繁琐的工作,自动化技术是高度需要的。目前可用的工具只能粗略地绘制油漆损失区域,同时仍然需要大量的手工工作。我们在这里开发了一种用于油漆损失检测的学习方法,该方法利用多模态图像采集,并将其应用于根特祭坛的当前修复中。我们的神经网络架构受到多尺度卷积神经网络U-Net的启发。在我们提出的模型中,池化层的下采样被省略以强制平移不变性,卷积层被扩展卷积取代。扩展的卷积导致更密集的计算和更高的分类精度。此外,所提出的方法被设计成利用多模态数据,这些数据现在通常在修复大师画作期间获得,并且可以更准确地检测感兴趣的特征,包括油漆损失。我们的重点是开发一种用户干扰最小的健壮方法。为了将预训练模型的适用性扩展到未包含在训练集中的绘画,只需适度的额外再训练,适当的迁移学习在这里至关重要。我们引入了一种基于多模态卷积自编码器的预训练策略,并在将其应用于其他绘画时对模型进行微调。我们通过将检测到的油漆损失图与手动专家注释进行比较,以及基于检测到的油漆损失运行虚拟修复,并将虚拟修复结果与实际物理修复进行比较,来评估结果。研究结果清楚地表明了所提出方法的有效性及其在艺术品保护和修复过程中的潜力。
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