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Dynamic Handwriting Analysis of the Character 'Y' for Writer Profiling Using Geometric Principles and Ratios

机译:基于几何原理和比率的作家个人档案“ Y”字符的动态手写分析

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Graphology is the science of identifying a person or their emotional state based on their handwriting. Graphology is traditionally performed manually, the model proposed by this paper attempts to automate this process. The model proposed applies static handwriting algorithms to a dynamic handwriting system. The character written by the user is captured dynamically using a stylus. The static pipeline will focus on extracting geometric features of a written character and perform classification based on the ratios of the extracted features. This pipeline is then compared against the dynamic pipeline which uses the dynamic handwriting algorithm of dynamic time warping. The metrics obtained from testing the proposed system proves that the use of static algorithms on dynamic systems is still an accurate and valid classification method as the overall accuracy is significantly higher than the dynamic pipeline's accuracy. The Fl scores for each class, within the static pipeline, further demonstrates that they were higher than the Fl scores from the dynamic pipeline. Furthermore, it was determined that the dynamic algorithm had the lower Fl score accuracy, however, this may be attributed to the small data sample used. It was found that the static features contributed more to the system than the dynamic features extracted.
机译:笔迹学是一门根据其笔迹识别一个人或他们的情绪状态的科学。笔迹学传统上是手动执行的,本文提出的模型试图使这一过程自动化。提出的模型将静态手写算法应用于动态手写系统。用户使用手写笔动态捕获字符。静态管道将专注于提取书写字符的几何特征,并根据所提取特征的比率进行分类。然后将该流水线与使用动态时间规整的动态手写算法的动态流水线进行比较。通过测试所提出的系统获得的度量证明,在动态系统上使用静态算法仍然是一种准确有效的分类方法,因为总体精度明显高于动态管道的精度。静态管道中每个类别的Fl得分进一步表明,它们比动态管道中的Fl得分更高。此外,已确定动态算法具有较低的Fl得分准确性,但是,这可能归因于所使用的小数据样本。发现静态特征比提取的动态特征对系统的贡献更大。

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