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检验使用暹罗网络比较撞针痕迹的可能性。

Examination of the possibility to use Siamese networks for the comparison of firing pin marks.

机构信息

Firearms Laboratory, Division of Identification and Forensic Science, Israel Police HQ, Jerusalem, Israel.

The Educational and Scientific Laboratory of Forensic Materials Engineering, Saratov State University, Saratov, Russia.

出版信息

J Forensic Sci. 2022 Nov;67(6):2416-2424. doi: 10.1111/1556-4029.15143. Epub 2022 Sep 23.

Abstract

One of the most discussed issues in forensic firearms identification is the subjectivity of conclusions. The main part of firearms examiners' work is to make a microscopic comparison of the marks on cartridge cases and bullets. In this process, examiners have to decide if the quantity and the quality of the observed characteristics are sufficient for identification. This decision is based on the personal experience of an examiner, so examiners with different backgrounds can come to different conclusions, and this fact presents a problem. Besides, the calculation of the error rate for this type of examination is a debatable issue. Different mathematical and statistical models were proposed, and computer-based algorithms were developed in order to avoid subjectivity and to determine error rates. This article investigates the possibility to use methods of machine learning for the comparison of marks of the firing pin impressions on cartridge cases. In the research, the Siamese network model, which included two similar Convolutional Neural Networks, was prepared and trained. For the training and validation of the model, the database of firing pin impressions was prepared. This database included images of cartridge cases discharged from 300 firearms that came from regular casework and clone images used for data augmentation. The model was trained and examined using the validation part of the database. The metrics, such as accuracy, sensitivity, and specificity were calculated. The results of the research show the possibility of using the Siamese network for building an objective forensic firearms examination system with a known error rate.

摘要

在法医枪支鉴定中,最具争议的问题之一是结论的主观性。枪支鉴定员工作的主要部分是对弹壳和子弹上的痕迹进行微观比较。在这个过程中,鉴定员必须决定观察到的特征的数量和质量是否足以进行鉴定。这个决定基于鉴定员的个人经验,因此具有不同背景的鉴定员可能会得出不同的结论,这就是问题所在。此外,这种类型的检查的错误率计算也是一个有争议的问题。已经提出了不同的数学和统计模型,并开发了基于计算机的算法,以避免主观性并确定错误率。本文研究了使用机器学习方法比较弹壳上的击针印痕的可能性。在研究中,准备并训练了包含两个相似卷积神经网络的暹罗网络模型。为了训练和验证模型,准备了击针印痕数据库。该数据库包括来自 300 支常规案件和用于数据扩充的克隆图像的枪支的弹壳的放电图像。使用数据库的验证部分对模型进行了训练和检查。计算了准确性、敏感性和特异性等指标。研究结果表明,使用暹罗网络构建具有已知错误率的客观法医枪支鉴定系统是可能的。

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