Skip to content

N-EPIC-Kitchens: The event-based camera extension of the large-scale EPIC-Kitchens dataset.

Notifications You must be signed in to change notification settings

EgocentricVision/N-EPIC-Kitchens

Repository files navigation

N-EPIC-Kitchens

N-EPIC-Kitchens: is the first event-based dataset for egocentric action recognition, presented at CVPR2022 in the paper "E^2(GO) MOTION: Motion Augmented Event Stream for Egocentric Action Recognition" Publication

Description

Three largest kitchen of EPIC Kitchens-55 dataset (P01-P08-P22) are enanched with the event modality, following the adaptive sampling procedure proposed in Vid2E Then, using a framelike event encoding technique, called Voxel Grid, the sparse and asynchronous events are converted in a tensor representation enabling the learning with typical convolutional neural network architectures.

Download

You can used the download script provided in the file download_data.sh or using rsync in the following way:

rsync -avhP rsync://vandaldata.polito.it/N-EPIC-Kitchens/  <path_to_save>

For only voxel_grid

rsync -avhP rsync://vandaldata.polito.it/N-EPIC-Kitchens/voxels_xy_3 <path_to_save>

For only raw event data

rsync -avhP rsync://vandaldata.polito.it/N-EPIC-Kitchens/events <path_to_save>

The directory structure:

├── voxels_xy_3/
|   
|   ├── P01_01
|   |   ├── event_0000000000.npy
|   |   ├── ...
|   ├── P01_02
|   ├── ...
| 
|   ├── P08_01
|   ├── ...
|   
|   ├── P22_01
|   ├── ...

If the entire download of voxels gets broken along the process and you only want to download certain videos to complete the dataset you can visit the Dropbox directory and select the files that you need.

Contributors:

Chiara Plizzari - email: [email protected]
Mirco Planamente - email: [email protected]
Gabriele Goletto - email: [email protected]
Marco Cannici - email: [email protected]

BibTeX

If this dataset was utilised, please cite:

@article{plizzari20212,
  title={E $\^{} 2$(GO) MOTION: Motion Augmented Event Stream for Egocentric Action Recognition},
  author={Plizzari, Chiara and Planamente, Mirco and Goletto, Gabriele and Cannici, Marco and Gusso, Emanuele and Matteucci, Matteo and Caputo, Barbara},
  journal={arXiv preprint arXiv:2112.03596},
  year={2021}
}

About

N-EPIC-Kitchens: The event-based camera extension of the large-scale EPIC-Kitchens dataset.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages