Center for Statistical Studies, Faculty of Computer and Mathematical Sciences, Universiti Teknologi MARA, Shah Alam, Selangor D.E., Malaysia.
Forensic Sci Int. 2010 May 20;198(1-3):143-9. doi: 10.1016/j.forsciint.2010.02.011. Epub 2010 Mar 7.
The task of identifying firearms from forensic ballistics specimens is exacting in crime investigation since the last two decades. Every firearm, regardless of its size, make and model, has its own unique 'fingerprint'. These fingerprints transfer when a firearm is fired to the fired bullet and cartridge case. The components that are involved in producing these unique characteristics are the firing chamber, breech face, firing pin, ejector, extractor and the rifling of the barrel. These unique characteristics are the critical features in identifying firearms. It allows investigators to decide on which particular firearm that has fired the bullet. Traditionally the comparison of ballistic evidence has been a tedious and time-consuming process requiring highly skilled examiners. Therefore, the main objective of this study is the extraction and identification of suitable features from firing pin impression of cartridge case images for firearm recognition. Some previous studies have shown that firing pin impression of cartridge case is one of the most important characteristics used for identifying an individual firearm. In this study, data are gathered using 747 cartridge case images captured from five different pistols of type 9mm Parabellum Vektor SP1, made in South Africa. All the images of the cartridge cases are then segmented into three regions, forming three different set of images, i.e. firing pin impression image, centre of firing pin impression image and ring of firing pin impression image. Then geometric moments up to the sixth order were generated from each part of the images to form a set of numerical features. These 48 features were found to be significantly different using the MANOVA test. This high dimension of features is then reduced into only 11 significant features using correlation analysis. Classification results using cross-validation under discriminant analysis show that 96.7% of the images were classified correctly. These results demonstrate the value of geometric moments technique for producing a set of numerical features, based on which the identification of firearms are made.
从过去的二十年开始,从法医学弹道学标本中识别枪支是犯罪调查中一项艰巨的任务。每支枪支,无论其大小、制造和型号如何,都有其独特的“指纹”。当枪支发射时,这些指纹会转移到发射的子弹和弹壳上。产生这些独特特征的部件包括射击室、后膛面、撞针、弹射器、提取器和枪管的膛线。这些独特的特征是识别枪支的关键特征。它使调查人员能够决定是哪一支特定的枪支发射了子弹。传统上,弹道证据的比较是一个繁琐且耗时的过程,需要高度熟练的检查人员。因此,本研究的主要目标是从弹壳图像的撞针痕迹中提取和识别适合枪支识别的特征。一些先前的研究表明,弹壳的撞针痕迹是用于识别单个枪支的最重要特征之一。在这项研究中,数据是通过从南非制造的五支 9 毫米 Para 口径 Vektor SP1 型手枪中捕获的 747 个弹壳图像收集的。然后将所有弹壳图像分成三个区域,形成三个不同的图像集,即撞针痕迹图像、撞针痕迹中心图像和撞针痕迹环图像。然后从每个图像的部分生成到第六阶的几何矩,形成一组数值特征。使用 MANOVA 检验发现,这 48 个特征有显著差异。然后使用相关分析将这一高维特征减少到只有 11 个显著特征。判别分析下的交叉验证分类结果表明,96.7%的图像被正确分类。这些结果表明,几何矩技术在产生一组数值特征方面具有价值,基于这些特征可以进行枪支识别。