高棉古棕榈叶识别的音节分析数据增强

Nimol Thuon, Jun Du, Jianshu Zhang
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引用次数: 0

摘要

高棉棕榈叶手稿识别系统的独特形态和物理条件越来越受到研究者的关注。在最先进的技术中,数据增强通常用于数据训练;然而,训练过程中的语法错误和数据可用性将决定或限制准确率。两大挑战在于(1)语法复杂性和(2)措辞相似性;因此,本文提出了音节分析数据增强(SADA)技术,旨在提高柬埔寨一份东南亚历史手抄本的文本识别系统的准确性。SADA包括两个基本模块:(1)制定音节/单词集合来构建字形模式;(2)通过增强技术从现有数据中生成模式,并利用灵活的几何图像变换来增加相似的单词/文本图像。首先,建立图像集合,根据重新排序的语法结构对数据集进行解释,构建多个字形图像。接下来,我们的目标是在调节基于注意力的编码器-解码器之前,在文本/单词识别系统上进行实验,以提高低分辨率和高分辨率图像的转录概率。最后,实验以各种来源的数据集为中心,包括ICFHR 2018比赛的公共数据集和我们新的增强数据集,所有这些数据集都旨在证明和评估研究结果的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Syllable Analysis Data Augmentation for Khmer Ancient Palm leaf Recognition
The unique forms and physical conditions of the Khmer palm leaf manuscript recognition system are receiving more attention from researchers. In the state-of-the-art, data augmentation is commonly used for data training; however, grammatical mistakes and data availability in the training process would determine or limit the accuracy rate. The two significant challenges lie in (1) grammar complexity and (2) wording similarity; therefore, this paper presents the Syllable Analysis Data Augmentation (SADA) technique, which aims at boosting the accuracy of the text recognition system for one of Southeast Asia's historical manuscripts from Cambodia. SADA comprises two fundamental modules: (1) formulating a collection of syllables/words to structure glyph patterns and (2) generating patterns from existing data through augmentation techniques and utilizing flexible geometric image transformation to increase similar word/text images. Initially, image collections are established, whereby datasets are interpreted according to the reordered grammatical structures to construct multiple glyph images. Next, we aim at conducting the experiment with a text/word recognition system before regulating attention-based encoder-decoder to enhance the probability of transcriptions of low and high-resolution images. At last, the experiment centers on datasets from various sources, including public datasets from ICFHR 2018 contest and our new augmentation datasets, all of which aim at demonstrating and evaluating the accuracy of the findings.
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