Official implementation of "Not only Look, but also Listen: Learning Multimodal Violence Detection under Weak Supervision" ECCV2020

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Deep LearningXDVioDet
Overview

XDVioDet

Official implementation of "Not only Look, but also Listen: Learning Multimodal Violence Detection under Weak Supervision" ECCV2020.

The project website is XD-Violence. The features can be downloaded from our project website.

where we oversample each video frame with the “5-crop” augment, “5-crop” means cropping images into the center and four corners. _0.npy is the center, _1~ _4.npy is the corners.

How to train

  • download or extract the features.
  • use make_list.py in the list folder to generate the training and test list.
  • change the parameters in option.py
  • run main.py

How to test

  • run infer.py

      the model is in the ckpt folder.

Thanks for your attention!

Owner
peng
PhD candidate of Xidian University
peng
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