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Geometrical feature based ranking using grey relational analysis (GRA) for writer identification

机译:使用灰色关联分析(GRA)进行基于几何特征的排名以识别作者

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The author's unique characteristic is determined by the variation of generated features from feature extraction process. Different sets of features produced are based on different feature extraction methods (local or global). Thus, the process has led to the production of high dimensional datasets that contributing to many irrelevant or redundant features. The main problem however is to find a way to identify the most significant features. The features ranking method using Grey Relational Analysis (GRA) is proposed to find the significance of each feature and give ranking to the features. This study presents the Higher-Order United Moment Invariant (HUMI) as the global feature extraction methods. The combinations of features with the higher ranking are discretized and used as the subsets of features to identify the writer. The result demonstrates that the average classification accuracy of five classifiers by using just the combination of two most significant features have yielded a better performance than using all features.
机译:作者的独特特征取决于特征提取过程中生成的特征的变化。产生的不同特征集基于不同的特征提取方法(局部或全局)。因此,该过程导致产生了许多无关或冗余特征的高维数据集。但是,主要问题是找到一种方法来识别最重要的功能。提出了使用灰色关联分析(GRA)的特征排序方法,以求出每个特征的重要性,并对特征进行排序。这项研究提出了高阶联合不变矩(HUMI)作为全局特征提取方法。具有较高排名的要素组合被离散化,并用作标识作者的要素子集。结果表明,仅使用两个最重要特征的组合,五个分类器的平均分类精度比使用所有特征产生了更好的性能。

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