EVALUATION OF GEOMETRIC MORPHOMETRIC APPROACH FOR ETHNICITIES DISCRIMINATION USING HANDWRITTEN NUMERAL CHARACTERS

Wan Nurul Syafawani Wan Mohd Taufek, Helmi Mohd Hadi Pritam, Wan Nur Syuhaila Mat Desa, D. Ismail
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Abstract

Handwriting evidence is a valuable source for authorship identification, an important aspect in investigating crimes such as murder, suicide, illegal drug trafficking, kidnapping, and document forgery. It relies heavily on the examination of written characters that make the document. However, specific studies on the handwritten numeral characters are scarce despite being crucial in assisting investigators in solving crimes. Hence, this study is aimed to gauge the possibility to discriminate authors according to their ethnicities by means of their handwritten numeral characters using a novel Geometric Morphometric (GMM) technique. Handwritten numeral characters collected from 30 individuals from three main different ethnic groups in Malaysia; Malay, Chinese and Indian were first digitised and landmarked using GMM software. Cluster patterns can be observed in the Principal Component Analysis (PCA) score plots, belonging exclusively to the three different ethnic groups. Significant differences (p<0.0001) were discovered in handwritten numerals characters 3, 4, 5, 7 and 9 amongst the three ethnicities when tested using Procrustes ANOVA, which signifying that it is possible to discriminate authors according to their ethnicities using their handwritten numeral characters. However, more sophisticated meta-analyses are needed in order to find the most effective technique for determining and discriminating the author's ethnicity.
评估利用手写数字字符进行种族识别的几何形态计量学方法
笔迹证据是鉴定作者身份的重要依据,也是调查谋杀、自杀、非法贩毒、绑架和伪造文件等犯罪的一个重要方面。它在很大程度上依赖于对构成文件的书写字符的检查。然而,尽管手写数字字符在协助调查人员破案方面至关重要,但有关手写数字字符的具体研究却很少。因此,本研究旨在利用新颖的几何形态计量(GMM)技术,通过手写数字字符来判断作者的种族。研究人员首先使用 GMM 软件对从马来西亚马来人、华人和印度人三大族群中收集的 30 个手写数字字符进行数字化和标记。在主成分分析(PCA)得分图中可以观察到完全属于三个不同族群的聚类模式。在使用 Procrustes ANOVA 方法进行检验时,发现三个民族的手写数字字符 3、4、5、7 和 9 之间存在显著差异(p<0.0001),这表明可以根据作者的手写数字字符对其民族进行区分。然而,要找到确定和区分作者民族的最有效技术,还需要进行更复杂的元分析。
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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