在线手写泰米尔语单词识别的语言模型

DAR '12 Pub Date : 2012-12-16 DOI:10.1145/2432553.2432562
S. Sundaram, Bhargava Urala K, A. Ramakrishnan
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引用次数: 11

摘要

N-gram语言模型和基于词典的词识别是文献中常用的提高在线和离线手写数据识别准确率的方法。然而,很少有作品处理这些技术在在线泰米尔手写数据上的应用。在本文中,我们探索了从大型泰米尔语文本语料库中开发符号级语言模型和词汇的方法,以及它们在提高符号和单词识别准确率方面的应用。在一个大约2000个单词的测试数据库中,我们发现二元语言模型提高了符号(3%)和单词识别(8%)的准确性,而词汇方法在单词识别方面提供了更大的改进(30%),但很大程度上依赖于选择正确的词汇。为了与基于词汇和语言模型的方法进行比较,我们还探索了重新评估技术,其中包括使用专家分类器来提高符号和单词识别的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Language models for online handwritten Tamil word recognition
N-gram language models and lexicon-based word-recognition are popular methods in the literature to improve recognition accuracies of online and offline handwritten data. However, there are very few works that deal with application of these techniques on online Tamil handwritten data. In this paper, we explore methods of developing symbol-level language models and a lexicon from a large Tamil text corpus and their application to improving symbol and word recognition accuracies. On a test database of around 2000 words, we find that bigram language models improve symbol (3%) and word recognition (8%) accuracies and while lexicon methods offer much greater improvements (30%) in terms of word recognition, there is a large dependency on choosing the right lexicon. For comparison to lexicon and language model based methods, we have also explored re-evaluation techniques which involve the use of expert classifiers to improve symbol and word recognition accuracies.
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