Scalable spatial point process models for forensic footwear analysis
Alokesh Manna, Neil Spencer, and Dipak K. Dey

TL;DR
This paper introduces a scalable hierarchical Bayesian model for forensic footwear analysis, improving accuracy in matching shoe prints by modeling accidental patterns with spatially varying coefficients.
Contribution
It develops a latent Gaussian model with integrated nested Laplace approximations and spatially varying coefficients, advancing forensic shoe print analysis methods.
Findings
Superior performance on held-out data
Enhanced accuracy and reliability in pattern matching
Efficient inference for large collections of shoe prints
Abstract
Shoe print evidence recovered from crime scenes plays a key role in forensic investigations. By examining shoe prints, investigators can determine details of the footwear worn by suspects. However, establishing that a suspect's shoes match the make and model of a crime scene print may not be sufficient. Typically, thousands of shoes of the same size, make, and model are manufactured, any of which could be responsible for the print. Accordingly, a popular approach used by investigators is to examine the print for signs of ``accidentals,'' i.e., cuts, scrapes, and other features that accumulate on shoe soles after purchase due to wear. While some patterns of accidentals are common on certain types of shoes, others are highly distinctive, potentially distinguishing the suspect's shoe from all others. Quantifying the rarity of a pattern is thus essential to accurately measuring the strength…
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