使用本地特征的在线手写泰米尔语和泰卢固语脚本的弹性匹配

Prasanth, Jagadeesh Babu, Raghunath Sharma, Prabhakara Rao, Dinesh Mandalapu, L. Prasanth, V. Jagadeesh Babu, R. Raghunath, Sharma Dinesh, M. G. V. P. Rao
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引用次数: 58

摘要

本文描述了一种基于字符的弹性匹配方法,利用局部特征识别在线手写数据。动态时间翘曲(DTW)被用于四种不同的特征集:x-y特征、形状上下文(SC)和切角(TA)特征、广义形状上下文特征(GSC)和包含x-y、标准化一阶导数和二阶导数以及曲率特征的第四集。采用DTW距离的最近邻分类器作为分类器。对比发现,SC和TA特征集的识别率是最慢的,而第四特征集的识别率是最好的。结果已汇编为在线手写泰米尔语和泰卢固语数据。在泰卢固语数据上,我们以0.166个符号/秒的速度获得了90.6%的准确率。为了提高速度,我们提出了一种两阶段识别方案,使用该方案我们获得了89.77%的准确率,但速度为3.977个符号/秒。
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Elastic Matching of Online Handwritten Tamil and Telugu Scripts Using Local Features
This paper describes character based elastic matching using local features for recognizing online handwritten data. Dynamic time warping (DTW) has been used with four different feature sets: x-y features, shape context (SC) and tangent angle (TA) features, generalized shape context feature (GSC) and the fourth set containing x-y, normalized first and second derivatives and curvature features. Nearest neighborhood classifier with DTW distance was used as the classifier. In comparison, the SC and TA feature set was found to be the slowest and the fourth set was best among all in the recognition rate. The results have been compiled for the online handwritten Tamil and Telugu data. On Telugu data we obtained an accuracy of 90.6% with a speed of 0.166 symbols/sec. To increase the speed we have proposed a 2-stage recognition scheme using which we obtained accuracy of 89.77% but with a speed of 3.977 symbols/sec.
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