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Writer Identification on Historical Glagolitic Documents

机译:历史文物文献的作者识别

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This work aims at automatically identifying scribes of historical Slavonic manuscripts. The quality of the ancient documents is partially degraded by faded-out ink or varying background. The writer identification method used is based on image features, which are described with Scale Invariant Feature Transform (SIFT) features. A visual vocabulary is used for the description of handwriting characteristics, whereby the features are clustered using a Gaussian Mixture Model and employing the Fisher kernel. The writer identification approach is originally designed for grayscale images of modern handwritings. But contrary to modern documents, the historical manuscripts are partially corrupted by background clutter and water stains. As a result, SIFT features are also found on the background. Since the method shows also good results on binarized images of modern handwritings, the approach was additionally applied on binarized images of the ancient writings. Experiments show that this preprocessing step leads to a significant performance increase: The identification rate on binarized images is 98.9%, compared to an identification rate of 87.6% gained on grayscale images.
机译:这项工作旨在自动识别历史斯拉夫手稿的抄写员。褪色的墨水或变化的背景会部分降低古代文献的质量。所使用的作者识别方法基于图像特征,这些特征用尺度不变特征变换(SIFT)特征进行描述。视觉词汇用于描述笔迹特征,从而使用高斯混合模型并采用Fisher核对特征进行聚类。作者识别方法最初是为现代笔迹的灰度图像设计的。但是与现代文献相反,历史手稿被背景混乱和水渍部分破坏。结果,在后台也发现了SIFT功能。由于该方法在现代笔迹的二值化图像上也显示出了良好的效果,因此该方法还应用于古代笔迹的二值化图像上。实验表明,该预处理步骤可显着提高性能:二值化图像上的识别率为98.9%,而灰度图像上的识别率为87.6%。

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