As the first step of the restoration process of painted relics, sketch extraction plays an important role in cultural research. However, sketch extraction suffers from serious disease corrosion, which results in broken lines and noise. To overcome these problems, we propose a deep learning-based hierarchical sketch extraction framework for painted cultural relics. We design the sketch extraction process into two stages: coarse extraction and fine extraction. In the coarse extraction stage, we develop a novel detail-aware bi-directional cascade network that integrates flow-based difference-of-Gaussians (FDoG) edge detection and a bi-directional cascade network (BDCN) under a transfer learning framework. It not only uses the pre-trained strategy to extenuate the requirements of large datasets for deep network training but also guides the network to learn the detail characteristics by the prior knowledge from FDoG. For the fine extraction stage, we design a new multiscale U-Net (MSU-Net) to effectively remove disease noise and refine the sketch. Specifically, all the features extracted from multiple intermediate layers in the decoder of MSU-Net are fused for sketch predication. Experimental results showed that the proposed method outperforms the other seven state-of-the-art methods in terms of visual and quantitative metrics and can also deal with complex backgrounds.


翻译:作为油漆文物修复过程的第一步,素描提取工作在文化研究中起着重要作用。然而,素描提取工作受到严重的疾病腐蚀,导致线条和噪音破碎。为了克服这些问题,我们提议为绘画文物建立一个深层次的基于学习的素描提取结构;我们将素描提取过程设计为两个阶段:粗糙提取和精细提取。在粗略提取阶段,我们开发了一个新颖的详细觉察双向双向级级联网络,在转让学习框架内,将以流动为基础的差差差差的Gausians(FDoG)边缘探测和双向级联级联网(BDCN)融合在一起。我们不仅利用预先培训的战略减轻大型数据集对深层网络培训的要求,而且还指导网络从以前知识中学习细节特征。在精细提取阶段,我们设计一个新的多级U-Net(MSU-Net)网络,以有效消除疾病噪音并改进素描图。具体地说,从移动的MSU-Net的多层中间层探测和双向级级联网(BCN)网络的双向级联结。它不仅利用预先训练战略战略,还展示了拟议的图像化方法。

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