六种流行印度文字的手写数字识别

U. Pal, N. Sharma, T. Wakabayashi, F. Kimura
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引用次数: 189

摘要

印度是一个多语言多文字的国家,但印度语言的手写字符识别工作并不多。本文提出了一种基于改进二次分类器的六种常用印度文字离线手写数字识别方案。在这里,我们考虑了德文加里语、孟加拉语、泰卢固语、奥里亚语、卡纳达语和泰米尔语。分类器中使用的特征是从数字的方向信息中获得的。对于特征计算,将数字的边界框分割成块,并在每个块中计算方向特征。然后通过高斯滤波器对这些块进行下采样,并将从下采样块中获得的特征馈送到改进的二次分类器中进行识别。这里我们使用了两组特性。在我们提出的系统中,我们使用64维特征进行高速识别,使用400维特征进行高精度识别。采用五重交叉验证技术进行结果计算,德文加里语、孟加拉语、泰卢固语、奥里亚语、卡纳达语和泰米尔语的准确率分别为99.56%、98.99%、99.37%、98.40%、98.71%和98.51%。
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Handwritten Numeral Recognition of Six Popular Indian Scripts
India is a multi-lingual multi-script country but there is not much work towards handwritten character recognition of Indian languages. In this paper we propose a modified quadratic classifier based scheme towards the recognition of off-line handwritten numerals of six popular Indian scripts. Here we consider Devnagari, Bangla, Telugu, Oriya, Kannada and Tamil scripts for our experiment. The features used in the classifier are obtained from the directional information of the numerals. For feature computation, the bounding box of a numeral is segmented into blocks and the directional features are computed in each of the blocks. These blocks are then down sampled by a Gaussian filter and the features obtained from the down sampled blocks are fed to a modified quadratic classifier for recognition. Here we have used two sets of feature. We have used 64 dimensional features for high-speed recognition and 400 dimensional features for high-accuracy recognition in our proposed system. A five-fold cross validation technique has been used for result computation and we obtained 99.56%, 98.99%, 99.37%, 98.40%, 98.71% and 98.51% accuracy from Devnagari, Bangla, Telugu, Oriya, Kannada, and Tamil scripts, respectively.
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