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metadata
license: other
viewer: false
tags:
  - deepfakes
  - gen-ai
  - text-to-video
pretty_name: DeepAction Dataset v1.0
size_categories:
  - 1K<n<10K
task_categories:
  - video-classification

The DeepAction dataset contains over 3,000 videos generated by seven text-to-video AI models, as well as real matched videos. These videos show people performing ordinary actions such as walking, running, and cooking. The AI models used to generate these videos include, in alphabetic order, AnimateDiff, CogVideoX5B, Lumiere, Pexels, RunwayML, StableDiffusion, Veo (pre-release version), and VideoPoet. Refer to our our pre-print for details.


Getting Started

To get started, log into Hugging Face in your CLI environment, and run:

from datasets import load_dataset
dataset = load_dataset("faridlab/deepaction_v1", trust_remote_code=True)

Data

The data is structured into eight folders, corresponding to different text-to-video AI models. Each folder has 100 subfolders containing AI-generated videos. These subfolders correspond to action classes; all videos in a given subfolder were generated using the same prompt (see the list of prompts here).

Real

AnimateDiff

CogVideoX5B

Lumiere

RunwayML

StableDiffusion

Veo (pre-release version)

VideoPoet


Licensing

TBD, will be provided by pcounsel


Misc

Please use the following citation when using this dataset:

TBD

This work was done during the first author's (Matyas Bohacek) internship at Google.