扫描南榜Aksara文档图像二值化的局部自适应阈值技术

F. Kurniadi, Desty Septyani, I. Pratama
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引用次数: 0

摘要

楠榜字是印尼地区遗产文字之一。然而,目前的趋势使这些角色变得不为人知。由于担心这些文字的灭绝,一些研究人员试图将包含楠榜文字的文件数字化。然而,数字化的过程并不是没有噪声的。这个问题使得我们需要使用二值化和去噪技术来处理扫描文档中的噪声,特别是在楠榜字符文档中。本文采用Niblack方法和Sauvola方法实现了局部自适应阈值分割。我们还实现了用于贝叶斯收缩的自适应小波阈值化,用于从二值化过程中去除盐和胡椒噪声。结果表明,与Niblack阈值法相比,Sauvola阈值法得到了更好的结果。我们在本文中的贡献是在楠榜字符文档中实现这两个过程
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Local Adaptive Thresholding Techniques for Binarizing Scanned Lampung Aksara Document Images
Lampung characters are one of the region-heritage characters from Indonesia. However, the current trend makes these characters becoming unknown. The concern about the extinction of these characters makes several researchers tried to digitized the documents which contained Lampung Character. Nevertheless, the process of digitalization is not free from noise. This problem makes us want to handle the noise from the scanned documents using binarization and noise removal techniques, especially in Lampung characters' documents. In this paper, we implemented local adaptive thresholding using the Niblack method and the Sauvola method for thresholding value. We also implemented Adaptive Wavelet Thresholding for Bayes Shrink for removing salt and pepper noise from the binarization process. The result showed that the Sauvola thresholding gives better results compared to Niblack thresholding. Our contribution in this paper is the implementation of both processes in Lampung Characters document
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