• Stars
    star
    107
  • Rank 323,587 (Top 7 %)
  • Language
    Python
  • License
    MIT License
  • Created over 3 years ago
  • Updated over 1 year ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

TSP: Temporally-Sensitive Pretraining of Video Encoders for Localization Tasks (ICCVW 2021)

PWC PWC PWC PWC

TSP: Temporally-Sensitive Pretraining of Video Encoders for Localization Tasks

[Paper] [Project Website]

This repository holds the source code, pretrained models, and pre-extracted features for the TSP method.

Please cite this work if you find TSP useful for your research.

@inproceedings{alwassel_2021_tsp,
  title={TSP: Temporally-Sensitive Pretraining of Video Encoders for Localization Tasks},
  author={Alwassel, Humam and Giancola, Silvio and Ghanem, Bernard},
  booktitle={Proceedings of the IEEE/CVF International
             Conference on Computer Vision (ICCV) Workshops},
  year={2021}
}

Pre-extracted TSP Features

We provide pre-extracted features for ActivityNet v1.3 and THUMOS14 videos. The feature files are saved in H5 format, where we map each video-name to a features tensor of size N x 512, where N is the number of features and 512 is the feature size. Use h5py python package to read the feature files. Not familiar with H5 files or h5py? here is a quick start guide.

For ActivityNet v1.3 dataset

Download: [train subset] [valid subset] [test subset]

Details: The features are extracted from the R(2+1)D-34 encoder pretrained with TSP on ActivityNet (released model) using clips of 16 frames at a frame rate of 15 fps and a stride of 16 frames (i.e., non-overlapping clips). This gives one feature vector per 16/15 ~= 1.067 seconds.

For THUMOS14 dataset

Download: [valid subset] [test subset]

Details: The features are extracted from the R(2+1)D-34 encoder pretrained with TSP on THUMOS14 (released model) using clips of 16 frames at a frame rate of 15 fps and a stride of 1 frame (i.e., dense overlapping clips). This gives one feature vector per 1/15 ~= 0.067 seconds.

Setup

Clone this repository and create the conda environment.

git clone https://github.com/HumamAlwassel/TSP.git
cd TSP
conda env create -f environment.yml
conda activate tsp

Data Preprocessing

Follow the instructions here to download and preprocess the input data.

Training

We provide training scripts for the TSP models and the TAC baselines here.

Feature Extraction

You can extract features from released pretrained models or from local checkpoints using the scripts here.

Acknowledgment: Our source code borrows implementation ideas from pytorch/vision and facebookresearch/VMZ repositories.