Abstract

The detection of traces is a main task of forensics. Hyperspectral imaging is a potential method from which we expect to capture more fluorescence effects than with common forensic light sources. This paper shows that the use of hyperspectral imaging is suited for the analysis of latent traces and extends the classical concept to the conservation of the crime scene for retrospective laboratory analysis. We examine specimen of blood, semen and saliva traces in several dilution steps, prepared on cardboard substrate. As our key result we successfully make latent traces visible up to dilution factor of 1:8000. We can attribute most of the detectability to interference of electromagnetic light with the water content of the traces in the shortwave infrared region of the spectrum. In a classification task we use several dimensionality reduction methods (PCA and LDA) in combination with a Maximum Likelihood classifier, assuming normally distributed data. Further, we use Random Forest as a competitive approach. The classifiers retrieve the exact positions of labelled trace preparation up to highest dilution and determine posterior probabilities. By modelling the classification task with a Markov Random Field we are able to integrate prior information about the spatial relation of neighboured pixel labels.

Highlights

  • Detecting latent traces is a key field of forensics

  • Our contribution is the proposal of important spectral regions and indices for the use of forensic light sources and hyperspectral imaging each associated to the responsible biological components, so that classification through common pattern recognition techniques can be applied

  • We describe features derived from captured intensities, which we will use to analyse spectroscopic properties of pure and latent traces concerning absorbance and reflectance characteristics, in order to make latent traces visible

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Summary

INTRODUCTION

Detecting latent traces is a key field of forensics. Light illumination and screening by goggles form the public image of crime scene investigation. Guided by the applications in forensics, we investigate two tasks: First, the visualization of latent traces by spectroscopic examination, and second, the automatic detection of latent traces by pixelwise classification. The former aims at the enhancement of contrast of latent traces with respect to the background. Our contribution is the proposal of important spectral regions and indices (i.e. combinations of light colors) for the use of forensic light sources and hyperspectral imaging each associated to the responsible biological components, so that classification through common pattern recognition techniques can be applied. We evaluate the suitability of hyperspectral imaging for crime scene application and provide an outlook for further extensions After the image acquisition the aperture is closed and the dark response Idark is measured.Therefrom, we derive normalized reflectance intensity values by

TRACES AND DATABASE
Spectral Indices
Fisher’s Ratio
CLASSIFICATION
Dimensionality Reduction
Random Forest
Markov Random Field
EXPERIMENTAL RESULTS
Visualization of Traces by Spectroscopic Examination
Binary Classification
Multiclass Classification
CONCLUSIONS
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