地面和空中轨迹的协同作用:对法医在线签名进行探索性分析,并从生物识别技术中吸取经验教训

Q3 Medicine
Manabu Okawa
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引用次数: 0

摘要

随着数字设备使用的增加,法医文件审查员(fde)在体检过程中遇到越来越多的动态或在线签名。这种转变扩大了考试的可能性,也给fde带来了新的挑战。因此,fde需要使用基于人工智能和机器学习技术的数据科学分析的新考试技能。近年来,自动签名验证在生物识别研究中引起了极大的兴趣,并可能在法医调查中发挥作用。然而,使用复杂的黑盒系统,使金融鉴定机构难以解释其最终评估的理由,特别是在处理有限的签名样本和各种类型的伪造签名时。因此,需要一种新的法医方法来辅助fde的分析。为了应对这些挑战,并将生物识别技术的经验教训纳入法医学,本研究提出了一种新的法医学在线签名分析方法。提出的方法使用基于生物识别最新科学发现的单模板策略,同时更新法医使用的策略。这个策略从已知的签名样本中创建一个均值模板集,作为写信人的签名主模式。因此,fde可以使用平均模板集和被质疑的签名来评估作者内部和项目间的变化。此外,为了利用最新的数字设备,我们关注了在线签名的地面和空中轨迹,这可以提高鉴别能力,因为空中轨迹对于冒名者来说是不可见的。最后,我们使用公共取证在线签名数据集证明了所提出方法在取证场景中的有效性和适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Synergy of on-surface and in-air trajectories: Exploratory analysis of forensic online signatures implementing lessons learned from biometrics

With the increased use of digital devices, forensic document examiners (FDEs) encounter increasing number of dynamic or online signatures during their physical examinations. This shift expands the possibility of examinations and creates new challenges for FDEs. As such, FDEs require new examination skills using data science-based analyses with artificial intelligence and machine-learning techniques. In recent years, automated signature verification has gained significant interest in biometric research and could be useful in forensic investigations. However, the use of complex black-box systems inconveniencing FDEs in explaining the rationale behind their final assessment, especially when dealing with limited signature samples and various types of forged signatures. Therefore, a new forensic method is needed to assist FDEs’ analysis. To tackle these challenges and incorporate lessons learned from biometrics into forensics, this study proposes a novel forensic online signature analysis method. The proposed method uses a single-template strategy based on recent scientific findings in biometrics while updating the strategy for forensic use. This strategy creates a mean-template set from known signature samples that serve as a writer’s signature master pattern. Consequently, FDEs can evaluate intra-writer and inter-item variations using the mean-template set and a questioned signature. Furthermore, to take advantage of recent digital devices, we focused on both on-surface and in-air trajectories of online signatures, which could improve the discriminative power because in-air trajectories are invisible for imposters. Finally, we demonstrate the effectiveness and applicability of the proposed method in a forensic scenario using a public forensic online signature dataset.

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来源期刊
Forensic Science International: Reports
Forensic Science International: Reports Medicine-Pathology and Forensic Medicine
CiteScore
2.40
自引率
0.00%
发文量
47
审稿时长
57 days
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