학술논문

Comparing footwear impressions that are close non‐matches using correlation‐based approaches.
Document Type
Article
Source
Journal of Forensic Sciences. May2021, Vol. 66 Issue 3, p890-909. 20p.
Subject
*CONVOLUTIONAL neural networks
*FOOTWEAR
*RECONNAISSANCE operations
*CRIME scenes
*FORENSIC sciences
Language
ISSN
0022-1198
Abstract
Forensic activities related to footwear evidence may be broadly classified into the following two categories: (1) intelligence gathering and (2) evidential value assessment. Intelligence gathering provides additional leads for investigators. Assessment of evidential value, as practiced in the United States, involves a trained footwear examiner evaluating the degree of similarity between a known shoe of interest (together with its test impressions) and footwear impressions obtained from a crime scene, by performing side‐by‐side visual comparisons. However, the need for developing quantitative approaches for expressing similarities during such comparisons is being increasingly recognized by the forensic science community. In this paper, we explore the ability of similarity metrics to discriminate between impressions made by a shoe of interest and impressions made by close non‐matching shoes. Close non‐matching shoes largely share the same design and size. Therefore, the ability to effectively discriminate between them requires considering, either explicitly or implicitly, not only design and size, but also wear patterns and, to some extent, individual characteristics. This type of discrimination is necessary for assessment of evidential value. The similarity metrics examined in this paper are correlation‐based metrics, including normalized cross‐correlation, phase‐only correlation, AvNCC, and AvPOC. The latter two metrics are based on features obtained from a convolutional neural network. Experiments are performed using Everspry impressions, FBI boot impressions, and the West Virginia University footwear impression collection. The results show that phase‐only correlation performs as well as or better than the other metrics in all cases for the datasets we considered. [ABSTRACT FROM AUTHOR]