Understanding and evaluation of potential evidence, as well as evaluation of automated systems for forensic examinations currently play an important role within the domain of digital crime scene analysis. The application of 3D sensing and pattern recognition systems for automatic extraction and comparison of firearm related tool marks is an evolving field of research within this domain. In this context, the design and evaluation of rotation-invariant features for use on topography data play a particular important role. In this work, we propose and evaluate a 3D imaging system along with two novel features based on topography data and multiple profile-measurement-lines for automatic matching of firing pin shapes. Our test set contains 72 cartridges of three manufactures shot by six different 9mm guns. The entire pattern recognition workflow is addressed. This includes the application of confocal microscopy for data acquisition, preprocessing covers outlier handling, data normalization, as well as necessary segmentation and registration. Feature extraction involves the two introduced features for automatic comparison and matching of 3D firing pin shapes. The introduced features are called ‘Multiple-Circle-Path’ (MCP) and ‘Multiple-Angle-Path’ (MAP). Basically both features are compositions of freely configurable amounts of circular or straight path-lines combined with statistical evaluations. During the first part of evaluation (E1), we examine how well it is possible to differentiate between two 9mm weapons of the same mark and model. During second part (E2), we evaluate the discrimination accuracy regarding the set of six different 9mm guns. During the third part (E3), we evaluate the performance of the features in consideration of different rotation angles. In terms of E1, the best correct classification rate is 100% and in terms of E2 the best result is 86%. The preliminary results for E3 indicate robustness of both features regarding rotation. However, in future work these results have to be validated using an enlarged test set.
The application of contact-less optical 3D sensing techniques yielding digital data for the acquisition of toolmarks on forensic ballistic specimens found at crime scenes, as well as the development of computer-aided, semi-automated firearm identification systems that are using 3D information, are currently emerging fields of research with rising importance. Traditionally, the examination of forensic ballistic specimen is done manually by highly skilled forensic experts using comparison microscopes. A partly automation of the comparison task promises examination results that are less dependent on subjective expertise and furthermore a reduction of the manual work needed. While there are some partly automated systems available they are all of proprietary nature to our current knowledge. One necessary requirement for the examination of forensic ballistic specimens is a reliable circle-detection and segmentation of cartridge bottoms. This information is later used for example for alignment and registration tasks, determination of regions of interest, and locally restricted application of complex feature-extraction algorithms. In this work we are using a Keyence VK-X 105 laser-scanning confocal microscope to acquire a very high detail topography image, a laserintensity image, and a color image of the assessed cartridge bottoms simultaneously. The work is focused on a comparison of Hough Transform (21HT) and Geometric Shape Determination for circle-detection on cartridge bottoms using 3D as well as 2D information. We compare the pre-processing complexity, the required processing time, and the ability for a reliable detection of all desired circles. We assume that the utilization of Geometric Shape Detection can reduce the required processing time due to a less complex processing. For application of shape determination as well as for Hough Transform we expect a more reliable circle-detection when using additional 3D information. Our first experimental evaluation, using 100 9mm center fire cartridges shot from 3 different firearms shows positive tendency to verify these suppositions.
The technology-aided support of forensic experts while investigating crime scenes and collecting traces becomes a more
and more important part in the domains of image acquisition and signal processing. The manual lifting of latent
fingerprints using conventional methods like the use of carbon black powder is time-consuming and very limited in its
scope of application. New technologies for a contact-less and non-invasive acquisition and automatic processing of latent
fingerprints, promise the possibilities to inspect much more and larger surface areas and can significantly simplify and
speed up the workflow. Furthermore, it allows multiple investigations of the same trace, subsequent chemical analysis of
the residue left behind and the acquisition of latent fingerprints on sensitive surfaces without destroying the surface itself.
In this work, a FRT MicroProf200 surface measurement device equipped with a chromatic white-light sensor CWL600 is
used. The device provides a gray-scale intensity image and 3D-topography data simultaneously. While large area scans
are time-consuming, the detection and localization of finger traces are done based on low-resolution scans. The localized
areas are scanned again with higher resolution. Due to the broad variety of different surface characteristics the fingerprint
pattern is often overlaid by the surface structure or texture. Thus, image processing and classification techniques are
proposed for validation and visualization of ridge lines in high-resolution scans. Positively validated regions containing
complete or sufficient partial fingerprints are passed on to forensic experts. The experiments are provided on a set of
three surfaces with different reflection and texture characteristics, and fingerprints from ten different persons.
KEYWORDS: Forensic science, Image classification, Sensors, Data acquisition, Process modeling, Colorimetry, Criminalistics, 3D image processing, Scene classification, Image resolution
In the field of latent fingerprint detection in crime scene forensics the classification of surfaces has importance. A new
method for the scientific analysis of image based information for forensic science was investigated in the last years. Our
image acquisition based on a sensor using Chromatic White Light (CWL) with a lateral resolution up to 2 μm. The used
FRT-MicroProf 200 CWL 600 measurement device is able to capture high-resolution intensity and topography images in
an optical and contact-less way. In prior work, we have suggested to use 2D surface texture parameters to classify
various materials, which was a novel approach in the field of criminalistic forensic using knowledge from surface
appearance and a chromatic white light sensor. A meaningful and useful classification of different crime scene specific
surfaces is not existent.
In this work, we want to extend such considerations by the usage of fourteen 3D surface parameters, called 'Birmingham
14'. In our experiment we define these surface texture parameters and use them to classify ten different materials in this
test set-up and create specific material classes. Further it is shown in first experiments, that some surface texture
parameters are sensitive to separate fingerprints from carrier surfaces. So far, the use of surface roughness is mainly
known within the framework of material quality control. The analysis and classification of the captured 3D-topography
images from crime scenes is important for the adaptive preprocessing depending on the surface texture. The adaptive
preprocessing in dependency of surface classification is necessary for precise detection because of the wide variety of
surface textures. We perform a preliminary study in usage of these 3D surface texture parameters as feature for the
fingerprint detection. In combination with a reference sample we show that surface texture parameters can be an
indication for a fingerprint and can be a feature in latent fingerprint detection.
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