Learning-based ballistic breech face impression image matching

Joseph Roth, Andrew Carriveau, Xiaoming Liu, Anil K. Jain
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引用次数: 11

Abstract

Ballistic images of a cartridge case or bullet carry distinct “fingerprints” of the firearm, which is the foundation of widely used forensic examination in criminal investigations. In recent years, prior work has explored the effectiveness of correlation-based approaches in matching ballistic imagery. However, most of these studies focused on highly controlled situations and used relatively simple image processing techniques, without leveraging supervised learning schemes. Toward improving the matching accuracy, especially on operational data, we propose a learning-based approach to compute the similarity between two ballistic images with breech face impressions. Specifically, after a global alignment between the reference and probe images, we unroll them into the polar coordinate for robust feature extraction and global registration. A gentleBoost-based learning scheme selects an optimal set of local cells, each constituting a weak classifier using the cross-correlation function. Experimental results and comparison with state-of-the-art methods on the NIST database and a new operational database, OFL, obtained from Michigan State Forensics Laboratory demonstrate the viability of our approach.
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基于学习的弹道后膛面部印痕图像匹配
弹壳或子弹的弹道图像带有明显的枪支“指纹”,这是刑事调查中广泛使用的法医鉴定的基础。近年来,前人研究了基于相关性的弹道图像匹配方法的有效性。然而,这些研究大多集中在高度控制的情况下,使用相对简单的图像处理技术,没有利用监督学习方案。为了提高匹配精度,特别是在作战数据上,我们提出了一种基于学习的方法来计算具有后膛面印象的两张弹道图像之间的相似性。具体来说,在参考图像和探测图像之间进行全局对齐后,我们将它们展开到极坐标中进行鲁棒特征提取和全局配准。基于绅士boost的学习方案选择一组最优的局部单元,每个单元使用相互关联函数构成一个弱分类器。实验结果以及与NIST数据库和从密歇根州法医实验室获得的新操作数据库OFL的最新方法的比较表明,我们的方法是可行的。
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