论文标题
与隐藏设计的艺术品的混合X射线图像分离
Mixed X-Ray Image Separation for Artworks with Concealed Designs
论文作者
论文摘要
在本文中,我们专注于带有隐藏的地下设计的绘画图像(例如,从艺术家的绘画支持或修订绘画支持或修订中得出),其中包括表面绘画和隐藏特征的贡献。特别是,我们提出了一种自我监督的深度学习图像分离方法,该方法可以应用于此类绘画的X射线图像,将它们分成两个假设的X射线图像。这些重建的图像之一与隐藏绘画的X射线图像有关,而第二幅图像仅包含与可见绘画的X射线有关的信息。提出的分离网络由两个组成部分组成:分析和综合子网络。分析子网络基于使用算法展开技术设计的耦合迭代收缩阈值算法(LCISTA),合成子网络由几个线性映射组成。学习算法以一种完全自我监督的方式运行,而无需一个包含混合X射线图像和分离图像的样品集。提出的方法是在带有隐藏内容的真实绘画上证明的,弗朗西斯科·德·戈亚(Francisco de Goya)的杜诺·伊莎贝尔·德·瓷器(DoñaSabelde Porcel)展示了其有效性。
In this paper, we focus on X-ray images of paintings with concealed sub-surface designs (e.g., deriving from reuse of the painting support or revision of a composition by the artist), which include contributions from both the surface painting and the concealed features. In particular, we propose a self-supervised deep learning-based image separation approach that can be applied to the X-ray images from such paintings to separate them into two hypothetical X-ray images. One of these reconstructed images is related to the X-ray image of the concealed painting, while the second one contains only information related to the X-ray of the visible painting. The proposed separation network consists of two components: the analysis and the synthesis sub-networks. The analysis sub-network is based on learned coupled iterative shrinkage thresholding algorithms (LCISTA) designed using algorithm unrolling techniques, and the synthesis sub-network consists of several linear mappings. The learning algorithm operates in a totally self-supervised fashion without requiring a sample set that contains both the mixed X-ray images and the separated ones. The proposed method is demonstrated on a real painting with concealed content, Doña Isabel de Porcel by Francisco de Goya, to show its effectiveness.