Online Handwritten Kannada Word Recognizer with Unrestricted Vocabulary

Rituraj Kunwar, K. Shashikiran, A. Ramakrishnan
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引用次数: 19

Abstract

In this paper, we propose a novel heuristic approach to segment recognizable symbols from online Kannada word data and perform recognition of the entire word. Two different estimates of first derivative are extracted from the preprocessed stroke groups and used as features for classification. Estimate 2 proved better resulting in 88\% accuracy, which is 3\% more than that achieved with estimate 1. Classification is performed by statistical dynamic space warping (SDSW) classifier which uses X, Y co-ordinates and their first derivatives as features. Classifier is trained with data from 40 writers. 295 classes are handled covering Kannada aksharas, with Kannada numerals, Indo-Arabic numerals, punctuations and other special symbols like \$ and \#. Classification accuracies obtained are 88\% at the akshara level and 80\% at the word level, which shows the scope for further improvement in segmentation algorithm.
在线手写卡纳达语单词识别器与无限制的词汇
在本文中,我们提出了一种新的启发式方法,从在线卡纳达语词数据中分割可识别的符号,并对整个词进行识别。从预处理卒中组中提取两种不同的一阶导数估计,并将其用作分类特征。估计2被证明更好,达到88%的准确率,比估计1高出3%。分类由统计动态空间扭曲(SDSW)分类器执行,该分类器使用X, Y坐标及其一阶导数作为特征。分类器使用来自40个编写者的数据进行训练。295类处理涵盖卡纳达语aksharas,使用卡纳达语数字,印度阿拉伯数字,标点符号和其他特殊符号,如\$和\#。得到的分类准确率在akshara级为88%,在词级为80%,显示了分割算法进一步改进的空间。
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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