用kNN分类器分离和识别混合英语-古吉拉特数字的OCR

S. Chaudhari, R. Gulati
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引用次数: 14

摘要

本文研究了双语印刷文档图像的文字识别问题。我们提出了一个OCR系统,分离和识别混合英语-古吉拉特数字。在这里,首先用标准数据样本训练系统。然后进行测试,从不同来源的纸张,如报纸,书籍,杂志等收集数据样本。将随机大小的预处理图像归一化为均匀大小的图像。采用统计方法进行特征提取。分类使用kNN分类器。该模型对古吉拉特数字的平均准确率为99.26%,对英语数字的平均准确率为99.20%,总体准确率为99.23%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An OCR for separation and identification of mixed English — Gujarati digits using kNN classifier
This paper addresses the script identification problem of bilingual printed document images. We propose an OCR system that separates and identify mixed English-Gujarati digits. Here, first the system is trained with standard data samples. Then for testing, data samples are collected from different sources of paper like, news paper, book, magazine, etc. Random sized pre-processed image is normalized to uniform sized image. A statistical approach is used for feature extraction. For classification kNN classifier is used. The model gives average accuracy of 99.26% for Gujarati digits, 99.20% for English digits, and overall accuracy 99.23%.
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