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Knowledge Based Lacunas Detection and Segmentation for Ancient Paintings

机译:基于知识的古代绘画的空白检测与分割

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Lacunas are a common form of the damage that can occur to paintings and more often to murals. Taking Dunhuang murals as research background, a new algorithm to detect and segment the lacuna area from mural images is proposed, which consists of a training phase and a runtime phase. In the training phase, a Bayesian classifier is trained. At runtime, the Bayesian classifier is first applied to perform the rough lacuna regions detection. Then, a graph representing the mural image is built with output of the Bayesian classifier. The domain knowledge of murals is incorporated into the graph in this step. At last, the image segmentation using graph cut is done based on the minimal cut/maximal flow algorithm. The outputs of the image segmentation are lacuna regions and background regions. About 250 high resolution Dunhuang mural images are collected to test the proposed method's performance. Experimental results have demonstrated its validity under certain variations. This research has the potential to provide a computer aided tool for mural protectors to restore damage mural paintings.
机译:LELUNA是一种常见的损坏,可以在绘画和更频繁地发生壁画。采用敦煌壁画作为研究背景,提出了一种检测和分割从壁画图像的LACUNA区域的新算法,由训练阶段和运行时相组成。在培训阶段,培训贝叶斯分类器。在运行时,首先应用贝叶斯分类器以执行粗糙的Lacuna区域检测。然后,用贝叶斯分类器的输出构建表示壁图像的图形。在该步骤中,壁图的域名知​​识纳入图表中。最后,使用曲线图切割的图像分割是基于最小切割/最大流量算法完成的。图像分割的输出是LETUNA区域和背景区域。收集大约250个高分辨率敦煌壁画图像以测试所提出的方法的性能。实验结果证明了在某些变化下的有效性。该研究有可能为壁饰保护器提供计算机辅助工具,以恢复损坏壁画绘画。

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