Grossmann Tamara G, Schönlieb Carola-Bibiane, Da Rold Orietta
Department of Applied Mathematics and Theoretical Physics, University of Cambridge, Cambridge, UK.
Faculty of English, University of Cambridge, Cambridge, UK.
Herit Sci. 2023;11(1):180. doi: 10.1186/s40494-023-01013-3. Epub 2023 Aug 24.
Medieval paper, a handmade product, is made with a mould which leaves an indelible imprint on the sheet of paper. This imprint includes chain lines, laid lines and watermarks which are often visible on the sheet. Extracting these features allows the identification of the paper stock and gives information about the chronology, localisation and movement of manuscripts and people. Most computational work for feature extraction of paper analysis has so far focused on radiography or transmitted light images. While these imaging methods provide clear visualisation of the features of interest, they are expensive and time consuming in their acquisition and not feasible for smaller institutions. However, reflected light images of medieval paper manuscripts are abundant and possibly cheaper in their acquisition. In this paper, we propose algorithms to detect and extract the laid and chain lines from reflected light images. We tackle the main drawback of reflected light images, that is, the low contrast attenuation of chain and laid lines and intensity jumps due to noise and degradation, by employing the spectral total variation decomposition and develop methods for subsequent chain and laid line extraction. Our results clearly demonstrate the feasibility of using reflected light images in paper analysis. This work enables feature extraction for paper manuscripts that have otherwise not been analysed due to a lack of appropriate images. We also open the door for paper stock identification at scale.
中世纪纸张是一种手工制品,由模具制作而成,会在纸张上留下不可磨灭的印记。这些印记包括直纹、横纹和水印,通常在纸张上可见。提取这些特征有助于识别纸张原料,并提供有关手稿及人员的年代、产地和流动的信息。到目前为止,纸张分析特征提取的大多数计算工作都集中在射线照相或透射光图像上。虽然这些成像方法能清晰显示感兴趣的特征,但它们获取成本高、耗时,对较小的机构来说不可行。然而,中世纪纸质手稿的反射光图像丰富,获取成本可能更低。在本文中,我们提出了从反射光图像中检测和提取横纹和直纹的算法。我们通过采用光谱全变差分解来解决反射光图像的主要缺点,即横纹和直纹的低对比度衰减以及由于噪声和退化导致的强度跳跃,并开发后续横纹和直纹提取的方法。我们的结果清楚地证明了在纸张分析中使用反射光图像的可行性。这项工作使得因缺乏合适图像而未被分析的纸质手稿能够进行特征提取。我们还为大规模纸张原料识别打开了大门。