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Improving writer identification by means of feature selection and extraction

机译:通过特征选择和提取改进作者识别

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摘要

To identify the author of a sample handwriting from a set of writers, 100 features are extracted from the handwriting sample. By applying feature selection and extraction methods on this set of features, subsets of lower dimensionality are obtained. We show that we can achieve significantly better writer identification rates if we use smaller feature subsets returned by different feature extraction and selection methods. The methods considered in this paper are feature set search algorithms, genetic algorithms, principal component analysis, and multiple discriminant analysis.
机译:为了从一组作者中识别出手写笔迹样本的作者,从手写笔迹中提取了100个特征。通过在这组特征上应用特征选择和提取方法,可以获得较低维数的子集。我们表明,如果使用通过不同特征提取和选择方法返回的较小特征子集,则可以显着提高作者识别率。本文考虑的方法是特征集搜索算法,遗传算法,主成分分析和多重判别分析。

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