利用异音特征鉴定法医学作家

Ruben Fernandez-de-Sevilla, F. Alonso-Fernandez, Julian Fierrez, J. Ortega-Garcia
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引用次数: 19

摘要

质疑文件检查被法医专家广泛用于刑事鉴定。提出了一种以一对多识别模式运行的基于异体特征的写作者识别系统。它适用于孤立的字符,考虑到每个作者使用的每个字符的形状数量减少。作者的单个字符由专家手动分割并标记为属于62个字母数字类别(10个数字和52个字母,包括小写和大写字母)中的一个,这是参与这项工作的法医实验室使用的特殊设置。然后通过聚类生成形状的码本,并将异体字使用的概率分布函数作为识别的判别特征。在一个包含30位作者的数据库中获得的结果表明,手工分析给出的字符类信息提供了一个有价值的改进来源,证明了所建议的方法是正确的。我们还评估了不同字母数字通道的选择,显示了命中列表的大小与最佳性能所需的通道数量之间的依赖关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forensic Writer Identification Using Allographic Features
Questioned document examination is extensively used by forensic specialists for criminal identification. This paper presents a writer recognition system based on allographic features operating in identification mode (one-to-many). It works at the level of isolated characters, considering that each writer uses a reduced number of shapes for each one. Individual characters of a writer are manually segmented and labeled by an expert as pertaining to one of 62 alphanumeric classes (10 numbers and 52 letters, including lowercase and uppercase letters), being the particular setup used by the forensic laboratory participating in this work. A codebook of shapes is then generated by clustering and the probability distribution function of allograph usage is the discriminative feature used for recognition. Results obtained on a database of 30 writers from real forensic documents show that the character class information given by the manual analysis provides a valuable source of improvement, justifying the proposed approach. We also evaluate the selection of different alphanumeric channels, showing a dependence between the size of the hit list and the number of channels needed for optimal performance.
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