A video summarization approach to speed-up the analysis of child sexual exploitation material

  1. Rubel Biswas 1
  2. Deisy Chaves 1
  3. Laura Fernández-Robles 1
  4. Eduardo Fidalgo 1
  5. Enrique Alegre 1
  1. 1 Universidad de León
    info

    Universidad de León

    León, España

    ROR https://ror.org/02tzt0b78

Libro:
XLII Jornadas de Automática: libro de actas, Castellón, 1 a 3 de septiembre de 2021

Editorial: Universitat Jaume I ; Servizo de Publicacións ; Universidade da Coruña ; Comité Español de Automática

ISBN: 978-84-9749-804-3

Año de publicación: 2021

Páginas: 648-654

Congreso: Jornadas de Automática (42. 2021. Castellón)

Tipo: Aportación congreso

Resumen

Identifying key content from a video is essential for many security applications such as motion/action detection, person re-identification and recognition. Moreover, summarizing the key information from Child Sexual Exploitation Materials, especially videos, which mainly contain distinctive scenes including people’s faces is crucial to speed-up the investigation of Law Enforcement Agencies. In this paper, we present a video summarization strategy that combines perceptual hashing and face detection algorithms to keep the most relevant frames of a video containing people’s faces that may correspond to victims or offenders. Due to legal constraints to access Child Sexual Abuse datasets, we evaluated the performance of the proposed strategy during the detection of adult pornography content with the NDPI-800 dataset. Also, we assessed the capability of our strategy to create video summaries preserving frames with distinctive faces from the original video using ten additional short videos manually labeled. Results showed that our approach can detect pornography content with an accuracy of 84.15% at a speed of 8.05 ms/frame making this appropriate for realtime applications.