The code in this repo is a clone from https://github.com/facebookresearch/SlowFast and adapted to train on the EPIC-KITCHENS-100 dataset. Particularly:
- We added a dataloader for EPIC-KITCHENS-100
- We added a training configuration file for EPIC-KITCHENS-100
- We adapted the code to train on verb+noun as multi-task learning
All the code to support EPIC-KITCHENS-100 is written by Evangelos Kazakos.
When using this code, kindly reference:
@ARTICLE{Damen2020RESCALING,
title={Rescaling Egocentric Vision},
author={Damen, Dima and Doughty, Hazel and Farinella, Giovanni Maria and and Furnari, Antonino
and Ma, Jian and Kazakos, Evangelos and Moltisanti, Davide and Munro, Jonathan
and Perrett, Toby and Price, Will and Wray, Michael},
journal = {CoRR},
volume = {abs/2006.13256},
year = {2020},
ee = {http://arxiv.org/abs/2006.13256},
}
and
@misc{fan2020pyslowfast,
author = {Haoqi Fan and Yanghao Li and Bo Xiong and Wan-Yen Lo and
Christoph Feichtenhofer},
title = {PySlowFast},
howpublished = {\url{https://github.com/facebookresearch/slowfast}},
year = {2020}
}
You can download our pretrained model on EPIC-KITCHENS-100 from this link
- Please install all the requirements found in the original SlowFast repo (link)
- Add this repository to $PYTHONPATH.
export PYTHONPATH=/path/to/SlowFast/slowfast:$PYTHONPATH
- From the annotation repository of EPIC-KITCHENS-100 (link), download: EPIC_100_train.pkl, EPIC_100_validation.pkl, and EPIC_100_test_timestamps.pkl. EPIC_100_train.pkl and EPIC_100_validation.pkl will be used for training/validation, while EPIC_100_test_timestamps.pkl will be used to obtain the scores to submit in the AR challenge.
- Download only the RGB frames of EPIC-KITCHENS-100 dataset using the download scripts found here. The training/validation code expects the following folder structure for the dataset:
├── dataset_root
| ├── P01
| | ├── rgb_frames
| | | | ├── P01_01
| | | | | ├── frame_0000000000.jpg
| | | | | ├── frame_0000000001.jpg
| | | | | ├── .
| | | | | ├── .
| | | | | ├── .
| | | | .
| | | | .
| | | | .
| ├── .
| ├── .
| ├── .
| ├── P37
| | ├── rgb_frames
| | | | ├── P37_101
| | | | | ├── frame_0000000000.jpg
| | | | | ├── frame_0000000001.jpg
| | | | | ├── .
| | | | | ├── .
| | | | | ├── .
| | | | .
| | | | .
| | | | .
So, after downloading the dataset navigate under <participant_id>/rgb_frames for each participant and untar each video's frames in its corresponding folder, e.g for P01_01.tar you should create a folder P01_01 and extract the contents of the tar file inside.
To train the model run:
python tools/run_net.py --cfg configs/EPIC-KITCHENS/SLOWFAST_8x8_R50.yaml NUM_GPUS num_gpus
OUTPUT_DIR /path/to/output_dir EPICKITCHENS.VISUAL_DATA_DIR /path/to/dataset
EPICKITCHENS.ANNOTATIONS_DIR /path/to/annotations
To validate the model run:
python tools/run_net.py --cfg configs/EPIC-KITCHENS/SLOWFAST_8x8_R50.yaml NUM_GPUS num_gpus
OUTPUT_DIR /path/to/experiment_dir EPICKITCHENS.VISUAL_DATA_DIR /path/to/dataset
EPICKITCHENS.ANNOTATIONS_DIR /path/to/annotations TRAIN.ENABLE False TEST.ENABLE True
TEST.CHECKPOINT_FILE_PATH /path/to/experiment_dir/checkpoints/checkpoint_best.pyth
After tuning the model's hyperparams using the validation set, we train the model that will be used for obtaining the test set's scores on the concatenation of the training and validation sets. To train the model on the concatenation of the training and validation sets run:
python tools/run_net.py --cfg configs/EPIC-KITCHENS/SLOWFAST_8x8_R50.yaml NUM_GPUS num_gpus
OUTPUT_DIR /path/to/output_dir EPICKITCHENS.VISUAL_DATA_DIR /path/to/dataset
EPICKITCHENS.ANNOTATIONS_DIR /path/to/annotations EPICKITCHENS.TRAIN_PLUS_VAL True
To obtain scores on the test set (using the model trained on the concatenation of the training and validation sets) run:
python tools/run_net.py --cfg configs/EPIC-KITCHENS/SLOWFAST_8x8_R50.yaml NUM_GPUS num_gpus
OUTPUT_DIR /path/to/experiment_dir EPICKITCHENS.VISUAL_DATA_DIR /path/to/dataset
EPICKITCHENS.ANNOTATIONS_DIR /path/to/annotations TRAIN.ENABLE False TEST.ENABLE True
TEST.CHECKPOINT_FILE_PATH /path/to/experiment_dir/checkpoints/checkpoint_best.pyth
EPICKITCHENS.TEST_LIST EPIC_100_test_timestamps.pkl EPICKITCHENS.TEST_SPLIT test
The code is published under the Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License, found here.