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Improving the evidential value of low-quality face images with aggregation of deep neural network embeddings.

作者信息

Ribeiro Rafael Oliveira, Neves João C, Ruifrok Arnout, de Barros Vidal Flavio

机构信息

Aston University, Birmingham, UK; Department of Computer Science, University of Brasilia, Brasília 70910-900, Brazil; National Institute of Criminalistics, Brasília, 70610-902, Brazil.

NOVA-LINCS, University of Beira Interior, Covilhã 6201-001, Portugal.

出版信息

Sci Justice. 2024 Sep;64(5):509-520. doi: 10.1016/j.scijus.2024.07.006. Epub 2024 Aug 7.

DOI:10.1016/j.scijus.2024.07.006
PMID:39277333
Abstract

In forensic facial comparison, questioned-source images are usually captured in uncontrolled environments, with non-uniform lighting, and from non-cooperative subjects. The poor quality of such material usually compromises their value as evidence in legal proceedings. On the other hand, in forensic casework, multiple images of the person of interest are usually available. In this paper, we propose to aggregate deep neural network embeddings from various images of the same person to improve the performance in forensic comparison of facial images. We observe significant performance improvements, especially for low-quality images. Further improvements are obtained by aggregating embeddings of more images and by applying quality-weighted aggregation. We demonstrate the benefits of this approach in forensic evaluation settings with the development and validation of common-source likelihood ratio systems and report improvements in C both for CCTV images and for social media images.

摘要

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