Sindel Aline, Klinke Thomas, Maier Andreas, Christlein Vincent
Pattern Recognition Lab, Friedrich-Alexander-Universität Erlangen-Nürnberg (FAU), 91058 Erlangen, Germany.
Cologne Institute of Conservation Sciences (CICS), Technische Hochschule Köln, 50678 Köln, Germany.
J Imaging. 2021 Jul 19;7(7):120. doi: 10.3390/jimaging7070120.
The paper structure of historical prints is sort of a unique fingerprint. Paper with the same origin shows similar chain line distances. As the manual measurement of chain line distances is time consuming, the automatic detection of chain lines is beneficial. We propose an end-to-end trainable deep learning method for segmentation and parameterization of chain lines in transmitted light images of German prints from the 16th Century. We trained a conditional generative adversarial network with a multitask loss for line segmentation and line parameterization. We formulated a fully differentiable pipeline for line coordinates' estimation that consists of line segmentation, horizontal line alignment, and 2D Fourier filtering of line segments, line region proposals, and differentiable line fitting. We created a dataset of high-resolution transmitted light images of historical prints with manual line coordinate annotations. Our method shows superior qualitative and quantitative chain line detection results with high accuracy and reliability on our historical dataset in comparison to competing methods. Further, we demonstrated that our method achieves a low error of less than 0.7 mm in comparison to manually measured chain line distances.
历史印刷品的纸张结构有点像独特的指纹。同一来源的纸张显示出相似的链条线距离。由于手动测量链条线距离很耗时,因此自动检测链条线是有益的。我们提出了一种端到端可训练的深度学习方法,用于对16世纪德国印刷品的透射光图像中的链条线进行分割和参数化。我们训练了一个具有多任务损失的条件生成对抗网络,用于线条分割和线条参数化。我们制定了一个用于线坐标估计的完全可微管道,该管道由线分割、水平线对齐、线段的二维傅里叶滤波、线区域提议和可微线拟合组成。我们创建了一个带有手动线坐标注释的历史印刷品高分辨率透射光图像数据集。与竞争方法相比,我们的方法在我们的历史数据集上显示出卓越的定性和定量链条线检测结果,具有高精度和可靠性。此外,我们证明,与手动测量的链条线距离相比,我们的方法实现了小于0.7毫米的低误差。