HumanoidRobotSoccer / README.md
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title: Fall Prediction Dataset for Humanoid Robots
datasets:
  - naos-fall-prediction
tags:
  - humanoid-robotics
  - fall-prediction
  - machine-learning
  - sensor-data
  - robotics
  - temporal-convolutional-networks
license:
  - apache-2.0

Fall Prediction Dataset for Humanoid Robots

Dataset Summary

This dataset consists of 37.9 hours of real-world sensor data collected from 20 Nao humanoid robots over the course of one year in various test environments, including RoboCup soccer matches. The dataset includes 18.3 hours of walking data, featuring 2519 falls. It captures a wide range of activities such as omni-directional walking, collisions, standing up, and falls on various surfaces like artificial turf and carpets.

The dataset is primarily designed to support the development and evaluation of fall prediction algorithms for humanoid robots. It includes data from multiple sensors, such as gyroscopes, accelerometers, and force-sensing resistors (FSR), recorded at a high frequency to track robot movements and falls with precision.

Using this dataset, the RePro-TCN model was developed, which outperforms existing fall prediction methods under real-world conditions. This model leverages temporal convolutional networks (TCNs) and incorporates advanced training techniques like progressive forecasting and relaxed loss formulations.

Dataset Structure

  • Duration: 37.9 hours total, 18.3 hours of walking
  • Falls: 2519 falls during walking scenarios
  • Data Types: Gyroscope (roll, pitch), accelerometer (x, y, z), body angle, and force-sensing resistors (FSR) per foot.

Use Cases

  • Humanoid robot fall prediction and prevention
  • Robot control algorithm benchmarking
  • Temporal sequence modeling in robotics

Licensing

This dataset is shared under the apache-2.0 license, allowing use and modification with proper attribution, as long as derivatives are shared alike.

Citation

If you use this dataset in your research, please cite it as follows:


license: apache-2.0