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Automated Firearm Identification: On Using a Novel Multiple-Slice-Shape (MSS) Approach for Comparison and Matching of Firing Pin Impression Topography

机译:自动枪械识别:使用新型多段形状(MSS)方法进行比较和匹配射击引脚印象地形

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The examination of firearm related toolmarks impressed to cartridges and bullets is a well known forensic discipline. The application of three dimensional imaging systems and pattern recognition techniques for automatic comparison and matching of topographic data is a central field of research in the domain of digital crime scene analysis. In this work, we introduce and evaluate a novel Multiple-Slice-Shape (MSS) approach with the objective to closer link the preprocessing and feature extraction stages and improve the automated examinations of firearm toolmark surface data. We employ two existing features which are applied to the topography of firing pin impressions and aim at an automatic matching of the shapes based on multiple line-profile measurement. We suggest several modifications of the original Multiple-Angle-Path (MAP) and Multiple-Circle-Path (MCP) features to achieve an optimal integration into the proposed processing pipeline. Our evaluation approach is three-fold. First, we aim at the determination of an initial parameterization for MSS processing and feature extraction. Second, we evaluate the accuracy of discrimination for two firearms of the same mark and model. Third, we evaluate the accuracy using six different weapons. The test set contains 72 cartridge samples including six guns and three ammunition manufactures. Regarding the first evaluation, the results indicate an improvement of the accuracy for both features. Regarding the second evaluation, the achieved accuracy ranges between 67% and 100% for the MAP feature, and between 92% and 100% for the MCP feature. With respect to the third evaluation, the best result is achieved for MAP32 with 73% and for MCP_(15) with 92% compared to 56% and 82% correct classification rate regarding the original versions. It is supposed that various 3D spatial features can be combined and maybe improved by using the proposed MSS approach. We motivate the evaluation of this question for future work.
机译:对墨盒和子弹印象印象深刻的枪支相关工具纪录是一个众所周知的伪造学科。三维成像系统和图案识别技术的应用进行自动比较和地形数据的匹配是数字犯罪现场分析领域的中央研究。在这项工作中,我们介绍和评估了一种新颖的多层形状(MSS)方法,目的是更接近预处理和特征提取阶段,并改善枪械工具标记表面数据的自动检查。我们采用了两个现有的特征,该特征应用于射击引脚印模的地形,并根据多线轮廓测量自动匹配形状。我们建议原始多角度路径(MAP)和多圆路径(MCP)特征的几个修改,以实现最佳集成到所提出的处理管道中。我们的评估方法是三倍。首先,我们旨在确定MSS处理和特征提取的初始参数化。其次,我们评估了同一标记和模型的两个枪支的歧视的准确性。第三,我们使用六种不同武器评估准确性。测试集包含72个盒式样品,包括六枪和三个弹药制造商。关于第一次评估,结果表明改善了两种特征的准确性。关于第二种评估,映射特征的达到的精度为67%和100%,MCP特征的92%和100%之间。关于第三评估,MAP32实现了最佳结果,其中73%,对于MCP_(15),92%,而有关原始版本的56%和82%的正确分类率。假设可以通过使用所提出的MSS方法来组合和可能改善各种3D空间特征。我们激励对未来工作的评估。

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