Applying Artificial Intelligence for Age Estimation in Digital Forensic Investigations
Thomas Grubl, Harjinder Singh Lallie

TL;DR
This paper introduces a new diverse facial image dataset and evaluates AI-based age estimation methods to improve accuracy in digital forensic investigations of child victims, highlighting current challenges and future needs.
Contribution
It presents a new dataset tailored for forensic age estimation and assesses AI algorithms, providing insights into current limitations and directions for enhancement.
Findings
Achieved MAE as low as 1.79 for ages 10-15
Dataset combined with FG-NET enhances diversity and size
Accuracy for children aged 0-10 remains challenging
Abstract
The precise age estimation of child sexual abuse and exploitation (CSAE) victims is one of the most significant digital forensic challenges. Investigators often need to determine the age of victims by looking at images and interpreting the sexual development stages and other human characteristics. The main priority - safeguarding children -- is often negatively impacted by a huge forensic backlog, cognitive bias and the immense psychological stress that this work can entail. This paper evaluates existing facial image datasets and proposes a new dataset tailored to the needs of similar digital forensic research contributions. This small, diverse dataset of 0 to 20-year-old individuals contains 245 images and is merged with 82 unique images from the FG-NET dataset, thus achieving a total of 327 images with high image diversity and low age range density. The new dataset is tested on the…
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Taxonomy
TopicsFace recognition and analysis · Sex work and related issues
