Abstract

The modern capabilities of computers have returned interest in artificial intelligence technologies. A particular area of application of these technologies is pattern recognition, which can be applied to the traditional forensic task – identification of signs of forgery (imitation) of a signature. The results of forgery are differentiated into three types: auto-forgery, simple and skilled forgeries. Only skilled forgeries are considered in this study. The online and offline approaches to the study of signatures and other handwriting material are described. The developed artificial intelligence system based on an artificial neural network refers to the offline type of signature recognition – that is, it is focused on working exclusively with the consequences of the signature – its graphic image. The content and principles of the formation of a hypothesis for the development of an artificial intelligence system are described with a combination of humanitarian (legal) knowledge and natural-technical knowledge. At the initial stage of the study, in order to develop an experimental-applied artificial intelligence system based on an artificial neural network focused on identifying forged signatures, 127 people were questioned in order to identify a person's ability to detect fake signatures. It was found that under experimental conditions the probability of a correct determination of the originality or forgery of the presented signature for the respondent is on average 69.29 %. Accordingly, this value can be used as a threshold for determining the effectiveness of the developed artificial intelligence system. In the process of preparing the dataset (an array for training and verification of its results) of the system in terms of fraudulent signatures, some forensically significant features were revealed, associated with the psychological and anatomical features of the person performing the forgery, both known to criminalistics and new ones. It is emphasized that the joint development of artificial intelligence systems by the methods of computer science and criminalistics can generate additional results that may be useful outside the scope of the research tasks.

Highlights

  • The study was carried out with the financial support of the Russian Foundation for Basic Research within the framework of scientific project No 18-29-16001 “Comprehensive Study of Legal, Forensic and Ethical Aspects Related to the Development and Operation of Artificial Intelligence Systems”

  • S. Offline Handwritten Signature Verification – Literature Review // 2017 Seventh International Conference on Image Processing Theory, Tools and Applications (IPTA)

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Summary

Introduction

The study was carried out with the financial support of the Russian Foundation for Basic Research within the framework of scientific project No 18-29-16001 “Comprehensive Study of Legal, Forensic and Ethical Aspects Related to the Development and Operation of Artificial Intelligence Systems”. Ключевой характеристикой систем на основе машинного обучения является отсутствие в них императивного свода правил: принятие решений осуществляется на основе прецедентного опыта, получаемого при множественных опытах восприятия больших данных, формирующих датасет системы, аналогично тому, как путем повторения материала происходит обучение человека. Д. Однако эта же особенность обусловливает основной недостаток данной технологии: изучение системы на основе машинного обучения (например, при реализации искусственной нейронной сети) требует именно большого объема данных, т.

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