Two Schemas for Online Character Recognition of Telugu Script Based on Support Vector Machines

J. Rajkumar, K. Mariraja, Kanakapriya Kanakapriya, S. Nishanthini, V. Chakravarthy
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引用次数: 15

Abstract

We present two schemas for online recognition of Telugu characters, involving elaborate multi-classifier architectures. Considering the three-tier vertical organization of a typical Telugu character, we divide the stroke set into 4 subclasses primarily based on their vertical position. Stroke level recognition is based on a bank of Support Vector Machines (SVMs), with a separate SVM trained on each of these classes. Character recognition for Schema 1 is based on a Ternary Search Tree (TST), while for Schema 2 it is based on a SVM. The two schemas yielded overall stroke recognition performances of 89.59% and 96.69% respectively surpassing some of the recent online recognition performance results related to Telugu script reported in literature. The schemas yield character-level recognition performances of 90.55% and 96.42% respectively.
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基于支持向量机的泰卢固语文字在线识别的两种模式
我们提出了两种泰卢固语字符在线识别模式,涉及复杂的多分类器架构。考虑到典型泰卢固字的三层垂直组织,我们主要根据它们的垂直位置将笔画集分为4个子类。笔划水平识别是基于一组支持向量机(SVM),在每个类上训练一个单独的支持向量机。模式1的字符识别基于三元搜索树(TST),而模式2的字符识别基于支持向量机。两种模式的总体笔画识别性能分别为89.59%和96.69%,超过了近期文献报道的部分泰卢固语文字在线识别结果。两种模式的字符级识别率分别为90.55%和96.42%。
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