基于弹壳图像的深度学习枪械品牌分类。

IF 2.5 3区 医学 Q1 MEDICINE, LEGAL
Edanur Meral, Ahmet Oğuz Akyüz
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引用次数: 0

摘要

当枪支被发射时,它会在弹壳上留下特征痕迹,法医弹道学对这些痕迹进行分析以识别枪支。传统的弹道检查系统依赖于弹壳和子弹的高质量图像,扫描数据库,根据相似度得分生成候选名单。然而,这些系统往往忽略了枪支品牌的独特特征,这可以细化搜索空间并提高识别准确性。在这项研究中,我们提出了一种基于深度学习的方法,利用归一化高度图和弹壳形状索引转换进行枪支品牌分类。使用BALISTIKA系统,我们从超过35万个弹壳中生成了高分辨率的表面表示,这些弹壳代表了最受欢迎的21个枪支品牌,代表了 rkiye刑事案件中遇到的97%的枪支,包括手工制作的枪支和改装的空白手枪(CBPs)。通过使用旋转样本对数据集中的少数类进行过采样,我们将其扩展到超过一百万个样本,并减轻了类的不平衡。我们评估了传统的机器学习(SVM, Random Forest)和深度学习模型(ResNet, Vision Transformer),其中深度学习方法实现了高达92%的准确率。这些发现表明,自动枪支品牌分类使法医检查员能够在弹道比较中自信地优先考虑来自同一品牌的弹壳。这种方法预计将大大缩短检查时间,提高法医调查的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Firearm brand classification using deep learning on cartridge case images
When a firearm is discharged, it leaves characteristic marks on the cartridge case, which are analyzed in forensic ballistics to identify the firearm. Conventional ballistic examination systems rely on high-quality images of cartridge cases and bullets, scanning databases to generate ranked candidate lists based on similarity scores. However, these systems often overlook the distinctive signatures of the firearm brand, which could refine search spaces and improve identification accuracy. In this study, we propose a deep learning-based approach leveraging normalized height maps and shape index transformation of cartridge cases for firearm brand classification. Using the BALISTIKA system, we generated high-resolution surface representations from over 350,000 cartridge cases representing the most populous 21 firearm brands, representing 97% of firearms encountered in criminal cases in Türkiye, including handcrafted firearms and converted blank pistols (CBPs). By oversampling the minority classes in the dataset using rotated samples, we expanded it to over a million samples and mitigated class imbalance. We evaluated both traditional machine learning (SVM, Random Forest) and deep learning models (ResNet, Vision Transformer), with deep learning approaches achieving superior performance of up to 92% accuracy. These findings demonstrate that automated firearm brand classification enables forensic examiners to confidently prioritize cartridge cases from the same brand during ballistic comparisons. This approach is expected to substantially reduce examination time and enhance the efficiency of forensic investigations.
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来源期刊
Forensic science international
Forensic science international 医学-医学:法
CiteScore
5.00
自引率
9.10%
发文量
285
审稿时长
49 days
期刊介绍: Forensic Science International is the flagship journal in the prestigious Forensic Science International family, publishing the most innovative, cutting-edge, and influential contributions across the forensic sciences. Fields include: forensic pathology and histochemistry, chemistry, biochemistry and toxicology, biology, serology, odontology, psychiatry, anthropology, digital forensics, the physical sciences, firearms, and document examination, as well as investigations of value to public health in its broadest sense, and the important marginal area where science and medicine interact with the law. The journal publishes: Case Reports Commentaries Letters to the Editor Original Research Papers (Regular Papers) Rapid Communications Review Articles Technical Notes.
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