基于曲线变换的铭文时代预测方法

B. Gangamma, K. S. Murthy, P. Punitha
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引用次数: 3

摘要

铭文的年代分类是文献图像分析与识别领域的主要挑战之一。碑文字符集的形状随着时代的变化而变化。要理解这个文字,就必须知道它对应的年代和它的字符集。线条和曲线是这些字符集的主要特征。鉴于曲线变换能有效地处理这些特征,本文设计了基于快速离散曲线变换(Fast Discrete curvelet transform, FDCT)的脚本时代预测模型。实验是在一个由4145张属于6个不同时代的图像组成的数据集上进行的。该方法的识别率为85.78%。将该方法与基于Gabor滤波和Zernike矩的方法进行了比较。结果表明,与基于Zernike矩和Gabor滤波的方法相比,该方法预测铭文年代的准确率平均为20% ~ 25%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Curvelet Transform based approach for prediction of epigraphical scripts era
Classification of epigraphical scripts into various era is one of the major challenges in the field of document image analysis and recognition. The shapes of the character set in epigraphical scripts have varied over the eras. To understand the script, it is necessary to know the corresponding era and its character set. Lines and curves are the dominating features of these character sets. Since curvelet transform is effective to handle these features, in this paper Fast Discrete Curvelet Transform (FDCT) based model is designed to predict the era of the script. Experimentation is conducted on a data set comprising of 4145 images belonging to six different eras. The recognition result of the proposed method is 85.78%. The proposed method is compared with Gabor filter and Zernike moments based approaches. The results show that the proposed method on an average has 20% to 25% accuracy over Zernike moment based and Gabor filter approaches in predicting the eras of the epigraphical scripts.
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