Recognition of Meetei Mayek characters using hybrid feature generated from distance profile and background directional distribution with Support Vector machine classifier

C. J. Kumar, S. Kalita, Uzzal Sharma
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引用次数: 6

Abstract

In this paper we have discussed the recognition of Meetei Mayek script with a Support Vector machine classifier. Distance profile feature and background directional distribution features are used as the feature vectors for training the SVM classifier. A comparative study is made on the performance between profile feature and background directional feature efficiency using SVM. Then a hybrid feature is generated by combining these two features and comparison of accuracy is done with the existing feature. Isolated handwritten documents are collected in some forms and experiment is performed over this dataset. For training the system the collection of documents is done from people from varying age group with different work background, so that the system can work well if we take the testing dataset from real world documents.
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基于距离轮廓和背景方向分布的混合特征识别Meetei Mayek字符
本文讨论了基于支持向量机分类器的Meetei Mayek脚本识别问题。使用距离轮廓特征和背景方向分布特征作为训练SVM分类器的特征向量。利用支持向量机对轮廓特征和背景方向特征的效率进行了比较研究。然后将这两个特征结合生成混合特征,并与已有特征进行精度比较。以某种形式收集孤立的手写文档,并对该数据集进行实验。为了训练系统,文档的收集来自不同年龄组和不同工作背景的人,因此如果我们从真实世界的文档中获取测试数据集,系统可以很好地工作。
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