Aug. 11, 2023, 6:43 a.m. | Pajon Quentin, Serre Swan, Wissocq Hugo, Rabaud Léo, Haidar Siba, Yaacoub Antoun

cs.LG updates on arXiv.org arxiv.org

This paper presents an investigation into machine learning techniques for
violence detection in videos and their adaptation to a federated learning
context. The study includes experiments with spatio-temporal features extracted
from benchmark video datasets, comparison of different methods, and proposal of
a modified version of the "Flow-Gated" architecture called "Diff-Gated."
Additionally, various machine learning techniques, including super-convergence
and transfer learning, are explored, and a method for adapting centralized
datasets to a federated learning context is developed. The research achieves
better …

accuracy architectures arxiv benchmark comparison context datasets detection features federated learning investigation machine machine learning machine learning techniques network neural network paper study surveillance temporal training video videos violence

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