Preprocessing and Binarization of Inscription Images using Phase Based Features

Sachin S. Bhat, G. Seshikala
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引用次数: 2

Abstract

Epigraphs are important sources for reshaping our culture and history. They have a remarkable importance to mankind. But modern epigraphists find it difficult to interpret the information in scripts. It is mainly because inscriptions are eroded over a period of time due to natural calamities. Scripts of ancient times are largely unknown. Character sets used have changed from one form to another over the centuries. Therefore, for reading ancient scripts the characters have to be extracted. In this paper, a model for enhancement and binarization of historical epigraphs is proposed. This model consists phase congruency and of Gaussian model based background elimination using expectation maximization(EM) algorithm, preprocessing and binarization. In binarization, phase based features are used with specialised filters. Adaptive Gaussian filters are used to smoothen the output images. Weighted mean angle is calculated to differentiate the foreground from the background. EM algorithm removes the background noise completely where foreground characters are untouched. Proposed method is tested on different datasets of inscriptions and epigraphs. Obtained results are compared with the existing classical algorithms.
基于相位特征的铭文图像预处理与二值化
铭文是重塑我们的文化和历史的重要来源。它们对人类有着非凡的重要性。但现代铭文学家发现很难解读文字中的信息。这主要是因为经过一段时间的自然灾害,碑文被侵蚀。古代的文字在很大程度上是未知的。几个世纪以来,使用的字符集从一种形式变成了另一种形式。因此,为了阅读古文字,必须提取汉字。本文提出了一个历史铭文的增强和二值化模型。该模型包括相位一致性和基于高斯模型的背景消除,采用期望最大化算法、预处理和二值化。在二值化中,基于相位的特征与专门的滤波器一起使用。自适应高斯滤波器用于平滑输出图像。计算加权平均角度以区分前景和背景。EM算法在不影响前景字符的情况下完全去除背景噪声。在不同的铭文和碑文数据集上对该方法进行了测试。所得结果与已有的经典算法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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