孟加拉手写体字符识别方法

L. Nahar
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引用次数: 0

摘要

在扫描过程中,手写字符信息的识别和提取仍然是一个挑战。本研究描述了一种有效识别孟加拉手写体字符的OCR方法。该方法主要通过特征提取和分类模型的建立等后处理步骤来寻找较好的准确率。特征提取采用LBP方法。局部二值模式是一种新兴的特征提取方法,在孟加拉语中应用的次数很少。这项工作也是一种实验方法,以确认在孟加拉汉字中使用LBP时发生了什么。分类采用随机森林算法,这也是一种独特的分类方法。这些数据集是通过收集以各种方式书写的孟加拉字符而收集的。首先,将孟加拉字符的扫描图像作为输入,并通过应用LBP提取所需的特征。对采集到的特征向量进行主成分分析(PCA)降维。最后,在输出中隐含射频算法来生成识别率。支持向量机(SVM)也被用作分类器来评估和比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bangla Handwritten Character Recognition Method
Recognizing and extracting handwritten character information is still a challenge in the scanning process. This research describes a method for OCR applications where Bengali handwritten characters can be recognized effectively. This method mainly focuses on post processing steps like feature extraction and building classification model to find a favorable accuracy rate. For feature extraction LBP method is used. Local Binary Pattern is a coming of age feature extracting method which is applied very few times in Bengali Language. This work is also an experimental approach of confirming what occurs when LBP is used in Bengali Characters. To classify Random Forest algorithm is applied, which is also a unique classification method. The datasets are gathered by collecting Bengali characters written in various fashions. Initially, scanned images of Bengali characters are given as input and by applying LBP required features are extracted. Principal Component Analysis (PCA) is applied on the collected feature vectors to reduce the dimension. Finally, RF algorithm is implied on the output to generate a recognition rate. Support vector machine (SVM) is also used as a classifier to evaluate and compare.
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