评估手写物品的作者信心

Sung-Hyuk Cha, S. Srihari
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引用次数: 24

摘要

作者验证是将可疑笔迹与从已知来源获得的笔迹样本进行比较的过程,目的是确定作者身份或非作者身份。它在许多类型的犯罪中起着重要的调查和法医作用。在这方面特别成问题的是,既不存在真正的标准,也不存在普遍的比较定义。因此,我们提出了一种算法目标方法。使用两个或多个数字扫描手写项目的视觉信息,我们展示了一种访问作者可信度的方法,即错误的概率。而不是建立一个昂贵的手写项目数据库来支持置信度,被质疑的单词是从CEDAR字母图像数据库中模拟出来的,以便处理任何手写项目。一个人工神经网络被训练来验证作者使用合成词。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing the authorship confidence of handwritten items
The Writer Verification is a process to compare questioned handwriting with samples of handwriting obtained from known sources for the purposes of determining authorship or non-authorship. It plays an important investigative and forensic role in many types of crime. Particularly problematic in this regard is the fact that there exists neither true standard nor universal definition of comparison. For this reason, we propose an algorithmic objective approach. Using visual information of two or more digitally scanned handwritten items, we show a method to access the authorship confidence that is the probability of errors. Instead of building a costly handwritten item database to support the confidence, questioned words are simulated from the CEDAR letter image database in order to handle any handwritten items. An Artificial Neural Network is trained to verify the authorship using the synthesized words.
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