(Unofficial) PyTorch library data efficient video transformer for video understanding and action recognatio
Project description
Data-efficient-video-transformer
this repo is for menovideo associated with the paper 'Data Efficient Video Transformer for Violence Detection' (DeVTR) the meno packge help you build video action recognation model based on our Novel model DeVTR
this is new novel transformer network combined with Conv net to build a highly accuract video action recognation model with limted data and hw rescources
In this work, we propose a data-efficient video transformer (DeVTr) based on the transformer network as a Spatio-temporal learning method with a pre-trained 2d-Convolutional neural network (2d-CNN) as an embedding layer for the input data. The model has been trained and tested on the Real-life violence dataset (RLVS) and achieved an accuracy of 96.25%. A comparison of the result for the suggested method with previous techniques illustrated that the suggested method provides the best result among all the other studies for violence event detection.
the trained wights can be downloaded from this url https://drive.google.com/file/d/1s7Z1c-4zC522BFVM5EiZDMQLe6ZV8QQh/view?usp=sharing
please use pytorch 1.9 for the pre-trained model
for detlied example of using the labrary use package_test.ipynb
To cite our paper/code:
@INPROCEEDINGS{9530829, author={Abdali, Almamon Rasool}, booktitle={2021 IEEE International Conference on Communication, Networks and Satellite (COMNETSAT)}, title={Data Efficient Video Transformer for Violence Detection}, year={2021}, volume={}, number={}, pages={195-199}, doi={10.1109/COMNETSAT53002.2021.9530829}}
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