Identifying persistent and characteristic features in firearm tool marks on cartridge cases

Recent concerns about subjectivity in forensic firearm identification have motivated the development of algorithms to compare firearm tool marks that are imparted on ammunition and to generate quantitative measures of similarity. In this paper, we describe an algorithm that identifies impressed tool marks on a cartridge case that are both consistent between firings and contribute strongly to a surface similarity metric. The result is a representation of the tool mark topography that emphasizes both significant and persistent features across firings. This characteristic surface map is useful for understanding the variability and persistence of the tool marks created by a firearm and can provide improved discrimination between the comparison scores of samples fired from the same firearm and the scores of samples fired from different firearms. The algorithm also provides a convenient method for visualizing areas of similarity that may be useful in providing quantitative support for visual comparisons by trained examiners.

[1]  Theodore V. Vorburger,et al.  Proposed Bullet Signature Comparisons Using Autocorrelation Functions | NIST , 2000 .

[2]  John Song,et al.  Comparison of optical and stylus methods for measurement of surface texture , 2007 .

[3]  Stefan Brinkman,et al.  4 – Advanced Gaussian Filters , 2003 .

[4]  Katsushi Ikeuchi,et al.  Three dimensional visualization and comparison of impressions on fired bullets. , 2004, Forensic science international.

[5]  Christophe Champod,et al.  Automatic Comparison and Evaluation of Impressions Left by a Firearm on Fired Cartridge Cases , 2014, Journal of forensic sciences.

[6]  Nicola Senin,et al.  Three‐Dimensional Surface Topography Acquisition and Analysis for Firearm Identification , 2006, Journal of forensic sciences.

[7]  Nicholas D K Petraco,et al.  Forensic surface metrology: tool mark evidence. , 2011, Scanning.

[8]  Nicholas D K Petraco,et al.  Evaluation of GLOCK 9 mm Firing Pin Aperture Shear Mark Individuality Based On 1,632 Different Pistols by Traditional Pattern Matching and IBIS Pattern Recognition , 2016, Journal of forensic sciences.

[9]  Jan Flusser,et al.  Image registration methods: a survey , 2003, Image Vis. Comput..

[10]  Song Zhang,et al.  Optimization of a Statistical Algorithm for Objective Comparison of Toolmarks , 2015, Journal of forensic sciences.

[11]  Nicholas Petraco,et al.  Application of Machine Learning to Toolmarks: Statistically Based Methods for Impression Pattern Comparisons , 2012 .

[12]  Xiaoming Liu,et al.  Learning-based ballistic breech face impression image matching , 2015, 2015 IEEE 7th International Conference on Biometrics Theory, Applications and Systems (BTAS).