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I3D_Feature_Extraction_resnet

This repo contains code to extract I3D features with resnet50 backbone given a folder of videos

This code can be used for the below paper. Use at your own risk since this is still untested.


Credits

The main resnet code and others is collected from the following repositories.

I modified and combined them and also added features to make it suitable for the given task.

Overview

This code takes a folder of videos as input and for each video it saves I3D feature numpy file of dimension 1*n/16*2048 where n is the no.of frames in the video

Usage

Setup

Download pretrained weights for I3D from the nonlocal repo

wget https://dl.fbaipublicfiles.com/video-nonlocal/i3d_baseline_32x2_IN_pretrain_400k.pkl -P pretrained/

Convert these weights from caffe2 to pytorch. This is just a simple renaming of the blobs to match the pytorch model.

python -m utils.convert_weights pretrained/i3d_baseline_32x2_IN_pretrain_400k.pkl pretrained/i3d_r50_kinetics.pth

Parameters

--datasetpath:       folder of input videos (contains videos or subdirectories of videos)
--outputpath:        folder of extracted features
--frequency:         how many frames between adjacent snippet
--batch_size:        batch size for snippets

Run

python main.py --datasetpath=samplevideos/ --outputpath=output

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I3D features extractor with resnet50 backbone

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