首页> 外文期刊>Sadhana: Academy Proceedings in Engineering Science >Increasing the effectiveness of handwritten Manipuri Meetei-Mayek character recognition using multiple-HOG-feature descriptors
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Increasing the effectiveness of handwritten Manipuri Meetei-Mayek character recognition using multiple-HOG-feature descriptors

机译:使用多猪特征描述符提高手写Manipuri Meatei-Mayek字符识别的有效性

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摘要

Detection and reading of the text from natural images is a difficult computer vision task, which is essential in a variety of emerging applications. Document character recognition is one such problem, which has been widely studied and documented by many machine learning and computer vision researchers, which is practically used for solving applications like recognizing handwritten digits. In this paper, a new approach for efficiently extracting cognition out of a total of 56 different classes of Handwritten Manipuri Meetei-Mayek (HMMM) (an Indian language) is described. Although character recognition algorithms have been researched and developed for other Indian scripts, no research work has been reported so far for recognizing all the characters of the Manipuri Meetei-Mayek (MMM). The work begins with a thorough analysis of the recognition task using a single hidden layer type Multilayer Perceptron Feedforward Artificial Neural Network with Histogram of Oriented Gradient (HOG) feature descriptors. After reviewing the level of accuracy and time it takes to train the network, the limitations are experimentally removed using multiple-sized cell grids using HOG descriptors. HOG, being a gradient-based descriptor, is very efficient in data discrimination and very stable with illumination variation. For efficient classification of the HOG features of the MMM, a linear multiclass support vector machine (SVM) classifier has been proposed for classifying the different offline characters because of its simplicity and speed. The classification based on linear multiclass SVM yielded a very high overall accuracy of 96.928%
机译:自然图像的检测和读取文本是一项困难的计算机视觉任务,这在各种新兴应用中都是必不可少的。文档字符识别是许多机器学习和计算机视觉研究人员的广泛研究和记录的一个这样的问题,这些研究员实际上用于解决识别手写数字等应用程序。在本文中,描述了一种新方法,用于有效地提取了总共56种不同类别的手写的手写曼佩里Meatei-Mayk(HMMM)(印度语言)。尽管为其他印度脚本进行了研究和开发了字符识别算法,但到目前为止没有报告研究工作,以认识到Manipuri Meatei-Mayek(MMM)的所有特征。该工作开始于使用单个隐藏的层类型多层Perceptron前馈人工神经网络的识别任务进行彻底分析,该校正梯度(HOG)特征描述符的直方图。在审查培训网络的准确性和时间水平后,使用使用HOG描述符使用多个大小的单元格网格进行实验删除的限制。作为基于梯度的描述符,HOG在数据识别中非常有效,并且具有光照变化非常稳定。为了有效分类MMM的HOG特征,已经提出了一种线性多字符支持向量机(SVM)分类器,用于分类不同的离线字符,因为其简单和速度。基于线性多标量SVM的分类产生了非常高的总精度为96.928%

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