An Investigation of Novel Combined Features for a Handwritten Short Answer Assessment System

Hemmaphan Suwanwiwat, U. Pal, M. Blumenstein
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Abstract

This paper proposes an off-line automatic assessment system utilising novel combined feature extraction techniques. The proposed feature extraction techniques are 1) the proposed Water Reservoir, Loop, Modified Direction and Gaussian Grid Feature (WRL_MDGGF), 2) the proposed Gravity, Water Reservoir, Loop, Modified Direction and Gaussian Grid Feature (G_WRL_MDGGF). The proposed feature extraction techniques together with their original features and other combined feature extraction techniques were employed in an investigation of the efficiency of feature extraction techniques on an automatic off-line short answer assessment system. The proposed system utilised two classifiers namely, artificial neural networks and Support Vector Machines (SVMs), two type of datasets and two different thresholds in this investigation. Promising recognition rates of 94.85% and 94.88% were obtained when the proposed WRL_MDGGF and G_WRL_MDGGF were employed, respectively, using SVMs.
手写简答评价系统的新型组合特征研究
本文提出了一种基于新型组合特征提取技术的离线自动评估系统。提出的特征提取技术为:1)提出的水库、环路、修正方向和高斯网格特征(WRL_MDGGF), 2)提出的重力、水库、环路、修正方向和高斯网格特征(G_WRL_MDGGF)。将所提出的特征提取技术及其原始特征和其他组合特征提取技术应用于离线自动答题评估系统的特征提取效率研究。提出的系统在本研究中使用了两种分类器,即人工神经网络和支持向量机(svm),两种类型的数据集和两种不同的阈值。采用支持向量机分别对提出的WRL_MDGGF和G_WRL_MDGGF进行识别,识别率分别为94.85%和94.88%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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