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Swarm-Based Feature Selection for Handwriting Identification

机译:基于群体的特征选择用于手写识别

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Problem statement: Handwriting identification is the study for identifying or verifying the writer of a given handwritten document. Since the handwriting features are the cornerstone in the writers' classification process, the classifier accuracy is sensitive in terms of how the writers are scored based on the used features. Approach: In this study, we introduced swarm intelligence as a features weighting mechanism to differentiate between the features having high importance and those having low importance in the identification process. The weights obtained from the swarm experiments were used to adjust the features scores and then to identify the most important subset feature for the writers classification process. Results: The experiments results showed that a significance influence of the feature weights in the handwriting identification process. Conclusion: This communication investigated the influence of the feature importance in the handwriting identification process. Binary Particle Swarm Optimization (BPSO) is used as feature selection method and Euclidian Distance (ED) is used as an evaluation function for the BPSO. The BPSO is trained using 956 words of the off-line IAM data (English handwriting) to learn the feature weights. Each word is represented by 29 statistical features.
机译:问题陈述:手写识别是用于识别或验证给定手写文档的作者的研究。由于手写特征是作者分类过程的基石,因此分类器的准确性对于基于使用的特征对作者进行评分的方式很敏感。方法:在这项研究中,我们引入了群体智能作为特征加权机制,以区分在识别过程中具有高重要性和低重要性的特征。从群体实验中获得的权重用于调整特征得分,然后识别出作家分类过程中最重要的子集特征。结果:实验结果表明,特征权重在手写识别过程中具有显着影响。结论:本次交流调查了特征重要性在手写识别过程中的影响。二元粒子群优化(BPSO)被用作特征选择方法,欧几里德距离(ED)被用作BPSO的评估函数。使用离线IAM数据的956个单词(英语手写)来训练BPSO,以学习特征权重。每个词由29个统计特征表示。

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