MCS HOG Features and SVM Based Handwritten Digit Recognition System

H. A. Khan
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引用次数: 17

Abstract

Digit Recognition is an essential element of the process of scanning and converting documents into electronic format. In this work, a new Multiple-Cell Size (MCS) approach is being proposed for utilizing Histogram of Oriented Gradient (HOG) features and a Support Vector Machine (SVM) based classifier for efficient classification of Handwritten Digits. The HOG based technique is sensitive to the cell size selection used in the relevant feature extraction computations. Hence a new MCS approach has been used to perform HOG analysis and compute the HOG features. The system has been tested on the Benchmark MNIST Digit Database of handwritten digits and a classification accuracy of 99.36% has been achieved using an Independent Test set strategy. A Cross-Validation analysis of the classification system has also been performed using the 10-Fold Cross-Validation strategy and a 10-Fold classification accuracy of 99.26% has been obtained. The classification performance of the proposed system is superior to existing techniques using complex procedures since it has achieved at par or better results using simple operations in both the Feature Space and in the Classifier Space. The plots of the system’s Confusion Matrix and the Receiver Operating Characteristics (ROC) show evidence of the superior performance of the proposed new MCS HOG and SVM based digit classification system.
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基于MCS HOG特征和SVM的手写数字识别系统
数字识别是扫描文件并将其转换为电子格式过程中的一个重要元素。在这项工作中,提出了一种新的多单元大小(MCS)方法,用于利用面向梯度直方图(HOG)特征和基于支持向量机(SVM)的分类器对手写数字进行有效分类。基于HOG的技术对相关特征提取计算中使用的单元大小选择敏感。因此,已经使用了一种新的MCS方法来执行HOG分析并计算HOG特征。该系统已在手写数字的基准MNIST数字数据库上进行了测试,使用独立测试集策略实现了99.36%的分类准确率。还使用10倍交叉验证策略对分类系统进行了交叉验证分析,并获得了99.26%的10倍分类准确率。所提出的系统的分类性能优于使用复杂过程的现有技术,因为它在特征空间和分类器空间中使用简单操作都获得了同等或更好的结果。系统的混淆矩阵和接收器操作特性(ROC)的图显示了所提出的新的基于MCS HOG和SVM的数字分类系统的优越性能。
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