Human-Centric Perception for Child Sexual Abuse Imagery
Camila Laranjeira, Jo\~ao Macedo, Sandra Avila, Fabr\'icio Benevenuto, Jefersson A. dos Santos

TL;DR
This paper introduces a new dataset and methods for human-centric perception to improve explainability in CSAI classification, addressing challenges of domain-specific and explicit content detection.
Contribution
It presents the Body-Keypoint-Part Dataset (BKPD) and two pose estimation and detection methods, advancing explainable CSAI classification models.
Findings
Methods achieve competitive results on COCO benchmarks and BKPD.
Cross-domain ablation studies reveal challenges in sexually explicit content detection.
The dataset enables more objective and explainable CSAI classification pipelines.
Abstract
Law enforcement agencies and non-gonvernmental organizations handling reports of Child Sexual Abuse Imagery (CSAI) are overwhelmed by large volumes of data, requiring the aid of automation tools. However, defining sexual abuse in images of children is inherently challenging, encompassing sexually explicit activities and hints of sexuality conveyed by the individual's pose, or their attire. CSAI classification methods often rely on black-box approaches, targeting broad and abstract concepts such as pornography. Thus, our work is an in-depth exploration of tasks from the literature on Human-Centric Perception, across the domains of safe images, adult pornography, and CSAI, focusing on targets that enable more objective and explainable pipelines for CSAI classification in the future. We introduce the Body-Keypoint-Part Dataset (BKPD), gathering images of people from varying age groups and…
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