metadata
license: cc-by-4.0
task_categories:
- video-classification
- visual-question-answering
- text-generation
language:
- en
tags:
- egocentric
- ego4d
- first-person-video
- activity-recognition
- narrations
- temporal-localization
- hands-and-objects
size_categories:
- n<1K
pretty_name: Egocentric Activity Sample Dataset
configs:
- config_name: default
data_files:
- split: train
path: data/train-*.parquet
Egocentric Activity Sample Dataset
A small-scale egocentric (first-person) video dataset with Ego4D-style annotations, designed for quick prototyping and experimentation with egocentric video understanding tasks.
Dataset Summary
| Metric | Value |
|---|---|
| Video clips | 19 |
| Total duration | ~9.5 minutes |
| Resolution | 960x540 (540p) |
| FPS | 30 |
| Narrations | 99 |
| NLQ queries | 57 |
| Moment annotations | 19 |
| FHO actions | 57 |
| Total size | ~54 MB |
Activities Covered
| Scenario | Activities | Clips |
|---|---|---|
| Object Manipulation | Pick & place, reorient & place, bimanual manipulation | 10 |
| Cleaning | Organizing bathroom, tidying bedroom | 6 |
| Cooking | Washing dishes at the sink | 3 |
Dataset Structure
├── videos/ # 19 egocentric video clips (30s each, 540p, h264)
│ ├── ego_pick_place_01.mp4
│ ├── ego_washing_dishes_01.mp4
│ └── ...
├── annotations/
│ ├── metadata.json # Video metadata (UIDs, duration, resolution, scenarios)
│ ├── narrations.json # Dense temporal narrations (Ego4D narration format)
│ ├── nlq.json # Natural Language Queries (Ego4D NLQ format)
│ ├── moments.json # Temporal activity moments (Ego4D moments format)
│ ├── fho_actions.json # Forecasting Hands & Objects actions (Ego4D FHO format)
│ └── taxonomy.json # Activity/verb/noun taxonomy
└── metadata.csv # Flat CSV for HuggingFace datasets library
Annotation Formats
All annotations follow the Ego4D v2 annotation schema.
Narrations
Dense temporal narrations using #C (camera wearer) and #O (other person) tags:
{
"timestamp_sec": 8.0,
"narration_text": "#C C applies soap to the sponge",
"is_camera_wearer": true
}
Natural Language Queries (NLQ)
Temporal grounding queries with response windows:
{
"query": "What dish did I wash?",
"clip_start_sec": 1.0,
"clip_end_sec": 24.0
}
Moments
Temporal activity localization labels:
{
"label": "wash_dishes_/_utensils_/_bakeware_etc.",
"start_time": 1.0,
"end_time": 28.0
}
FHO Actions
Hands & objects interaction annotations with critical frames:
{
"structured_verb": "scrub",
"structured_noun": "dish",
"critical_frames": {
"pre_frame": {"sec": 11.5},
"contact_frame": {"sec": 13.0},
"pnr_frame": {"sec": 12.7},
"post_frame": {"sec": 14.5}
}
}
Usage
With HuggingFace Datasets
from datasets import load_dataset
ds = load_dataset("WhissleAI/egocentric-activity-sample")
Direct JSON Loading
import json
with open("annotations/narrations.json") as f:
narrations = json.load(f)
for video in narrations["videos"]:
for n in video["narrations"]:
print(f"[{n['timestamp_sec']:.1f}s] {n['narration_text']}")
Sources
Video clips are derived from publicly available egocentric video datasets:
- HoyerChou/EgocentricVideos — pick-place, reorient, bimanual manipulation
- TrainThemAI/POV-Egocentric-Video-Robotics-FHD-Samples — household activities
All videos downscaled to 540p and trimmed to 30-second clips.
License
CC-BY-4.0 — see source datasets for their respective licenses.
Citation
If you use this dataset, please cite the original Ego4D paper for the annotation format:
@inproceedings{grauman2022ego4d,
title={Ego4d: Around the world in 3,000 hours of egocentric video},
author={Grauman, Kristen and others},
booktitle={CVPR},
year={2022}
}