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Local texture descriptors and projection histogram based handwritten Meitei Mayek character recognition

机译:基于本地纹理描述符和投影直方图的手写Meitei Mayek字符识别

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摘要

In this paper, we use the local texture descriptor and projection histogram feature for handwritten Meitei Mayek (Manipuri script) recognition. The different variations of the local binary pattern (LBP) namely, uniform LBP (ULBP), improved LBP (ILBP), center-symmetric LBP (CS-LBP) account for local texture descriptors. These features along with the projection histogram, separately and combined are presented to machine learning algorithms, k nearest neighbor (KNN), support vector machine (SVM) and Random Forest (RF) for classification of characters. The experiments by these feature descriptors with the classifiers have been evaluated on self-collected handwritten Meitei Mayek character dataset having 9800 samples. High accuracy is achieved even with the simple KNN classifier. Furthermore, classification with SVM and RF are explored, and the results are compared with the pixel-based methods which use the intensities value directly and a classic CNN model for recognition. The comparative results show that local texture descriptors and projection histogram strongly outperform pixel-based methods. The overall superior accuracy is achieved when the feature descriptors are combined with KNN classifier and performed even better than the CNN model.
机译:在本文中,我们使用本地纹理描述符和投影直方图特征,用于手写MEITEI Mayek(Manipuri脚本)识别。局部二进制模式(LBP)的不同变化即,统一的LBP(ULBP),改进的LBP(ILBP),局部纹理描述符的核对LBP(CS-LBP)占据账户。这些特征以及投影直方图,单独和组合呈现给机器学习算法,K最近邻(KNN),支持向量机(SVM)和随机林(RF),用于字符的分类。这些特征描述符与分类器的实验已经在自收集的手写Meitei Mayek字符数据集上进行了评估,具有9800个样本。即使使用简单的KNN分类器也可以实现高精度。此外,探索使用SVM和RF进行分类,并将结果与​​基于像素的方法进行比较,该方法直接使用强度值和用于识别的经典CNN模型。比较结果表明,局部纹理描述函数和投影直方图强烈优于基于像素的方法。当特征描述符与KNN分类器组合时,实现整体卓越的精度,并且比CNN模型更好地执行。

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