MultiSensor-Home2 / README.md
thanhhff's picture
Update README.md
a6557b8 verified
|
Raw
History Blame Contribute Delete
5.57 kB
metadata
license: cc-by-4.0

A simple way to download the dataset:

# Make sure hf CLI is installed: pip install -U "huggingface_hub[cli]"
hf download thanhhff/MultiSensor-Home2 --repo-type=dataset --local-dir dataset/home2 

The MultiSensor-Home1 dataset is available at: https://huggingface.co/datasets/thanhhff/MultiSensor-Home1/

MultiSensor-Home2: Benchmark for Multi-modal Multi-view Action Recognition in Home Environments

MultiSensor-Home2 is an extended version of MultiSensor-Home1, captured in a different home layout while maintaining the same structure and recording settings. This dataset is designed for multi-view action recognition and transformer-based sensor fusion research.

📊 Dataset Overview

MultiSensor-Home is a comprehensive multi-view action recognition dataset captured in a real home environment. The dataset features:

  • Multi-view Setup: 5 synchronized camera views (View1-View5)
  • High-resolution: Original resolution 4000×3000 pixels (available upon request)
  • Optimized for Deep Learning: Resized to 320×240 pixels for efficient training
  • Temporal Annotations: Precise start/end timestamps for each action
  • Real-world Scenarios: Natural human activities in home environment
  • Action Classes: 16 different action classes in this environment

Note: The original high-resolution dataset (4000×3000 pixels) is available upon request. Please contact: nguyent [at] cs.is.i.nagoya-u.ac.jp

🏠 Room Layout and Camera Setup

Home1 Layout

Home1 floor plan showing camera positions and room layout

  • Room Layout: Complete floor plan of the home environment
  • Camera Positions: Exact placement of all 5 cameras (View1-View5)
  • Camera Orientations: Direction and field of view for each camera
  • Room Dimensions: Spatial measurements and room configurations
  • Recording Environment: Overview of the home setup used for data collection

This layout file is essential for understanding the spatial relationships between different camera views and the overall recording environment.

🏠 Dataset Structure

MultiSensor-Home2/
├── 01/                    # Recording session 1
├── 02/                    # Recording session 2
├── 03/                    # Recording session 3
├── 04/                    # Recording session 4
├── 05/                    # Recording session 5
├── 06/                    # Recording session 6
├── 07/                    # Recording session 7
├── 08/                    # Recording session 8
├── 09/                    # Recording session 9
├── all_labels.json        # Complete annotations
├── train_data.json        # Training split annotations
├── test_data.json         # Test split annotations
└── README.md              # This file

📹 Video File Naming Convention

Videos follow the pattern: {id}-{View}{number}-Part{part}.mp4

Examples:

  • 00-View1-Part1.mp4 - ID 00, View 1, Part 1
  • 15-View3-Part2.mp4 - ID 15, View 3, Part 2
  • 23-View5-Part1.mp4 - ID 23, View 5, Part 1

🏷️ Action Classes

The dataset contains 16 action classes covering various human activities in the home environment:

  • Basic Movements: Sitdown, Standup, Enter, Exit
  • Device Usage: UseLaptop, UsePhone, ReadBook
  • Environmental Control: TurnOnLamp, TurnOffLamp
  • Home Activities: OpenCurtain, CloseCurtain, Eat, Drink
  • And more...

📋 Annotation Format

Each video segment is annotated with:

{
  "video_url_1": "01/00-View1-Part1.mp4",
  "video_url_2": "01/00-View2-Part1.mp4",
  "video_url_3": "01/00-View3-Part1.mp4",
  "video_url_4": "01/00-View4-Part1.mp4",
  "video_url_5": "01/00-View5-Part1.mp4",
  "tricks": [
    {
      "start": 0.6758380883417825,
      "end": 6.314058810132165,
      "channel": 0,
      "labels": [
        "Enter"
      ]
    }
}

Annotation Fields:

  • video_url_1-5: Paths to the 5 synchronized video views
  • start/end: Temporal boundaries in seconds
  • labels: Action label for the time segment

📧 Original High-Resolution Dataset

The original dataset at full resolution (4000×3000 pixels) is available upon request.

Please include:

  • Your name and affiliation
  • Intended use of the dataset
  • Brief description of your research

📄 License and Citation

When using this dataset, please cite our paper:

@inproceedings{nguyen2025multisensor,
  author    = {Trung Thanh Nguyen and Yasutomo Kawanishi and Vijay John and Takahiro Komamizu and Ichiro Ide},
  title     = {MultiSensor-Home: A Wide-area Multi-modal Multi-view Dataset for Action Recognition and Transformer-based Sensor Fusion},
  booktitle = {Proceedings of the 19th IEEE International Conference on Automatic Face and Gesture Recognition},
  year      = {2025},
  note      = {Best Student Paper Award}
}

🤝 Contributing

We welcome contributions and feedback. If you find any issues or have suggestions for improvements, please contact us.

📞 Contact

For questions about the dataset, paper, or to request the original high-resolution version:

Email: nguyent [at] cs.is.i.nagoya-u.ac.jp

Acknowledgement

This work was partly supported by Japan Society for the Promotion of Science (JSPS) KAKENHI JP21H03519 and JP24H00733.


This dataset is designed to advance research in multi-view action recognition, sensor fusion, and transformer-based approaches for understanding human activities in real-world environments.