Crawford Amy M, Ommen Danica M, Carriquiry Alicia L
Berry Consultants, LLC, Austin, Texas, USA.
Department of Statistics, Iowa State University, Ames, Iowa, USA.
J Forensic Sci. 2023 Sep;68(5):1768-1779. doi: 10.1111/1556-4029.15337. Epub 2023 Jul 14.
We develop a statistical approach to model handwriting that accommodates all styles of writing (cursive, print, connected print). The goal is to compute a posterior probability of writership of a questioned document given a closed set of candidate writers. Such probabilistic statements can support examiner conclusions and enable a quantitative forensic evaluation of handwritten documents. Writing is treated as a sequence of disjoint graphical structures, which are extracted using an automated and open-source process. The graphs are grouped based on the similarity of their shapes through a K-means clustering template. A person's writing pattern can be characterized by the rate at which graphs are emitted to each cluster. The cluster memberships serve as data for a Bayesian hierarchical model with a mixture component. The rate of mixing between two parameters in the hierarchy indicates writing style.
我们开发了一种统计方法来对手写进行建模,该方法适用于所有书写风格(草书、印刷体、连笔印刷体)。目标是在给定一组封闭的候选书写者的情况下,计算一份有疑问文件的书写者的后验概率。这种概率性陈述可以支持笔迹鉴定专家的结论,并对手写文件进行定量的法医评估。书写被视为一系列不相交的图形结构,这些结构通过一个自动化的开源过程提取。通过K均值聚类模板,根据图形形状的相似性对这些图形进行分组。一个人的书写模式可以通过图形发射到每个聚类的速率来表征。聚类成员作为具有混合成分的贝叶斯层次模型的数据。层次结构中两个参数之间的混合速率表明书写风格。