HomeElectronics NewsHumanoid Robots Learning To Get Up

Humanoid Robots Learning To Get Up

Researchers at the University of Illinois Urbana-Champaign have created a system that helps humanoid robots stand up independently after falling. 

Credit: Xialin He et al
Credit: Xialin He et al

Humanoid robots, designed with a human-like structure, are becoming more capable of handling real-world tasks as advancements in control algorithms improve their speed and movement complexity. However, they are prone to tripping or colliding with objects since they walk and run on two legs like humans. Unlike humans, who can easily stand up after falling, these robots often struggle to recover without external assistance.

- Advertisement -

Researchers at the University of Illinois Urbana-Champaign have developed a machine-learning framework enabling humanoid robots to recover after falling autonomously. The framework could enhance robot autonomy and support their broader deployment.

The research team developed a framework called HUMANUP, which uses reinforcement learning (RL) to help humanoid robots stand up on their own, regardless of their falling position.

Previous applications of humanoid locomotion learning have been successful, but the task of getting up presents additional challenges due to complex contact patterns. Accurately modelling collision geometry and handling sparse rewards are essential for effective recovery. A two-phase approach is used to address these challenges, following a structured curriculum.

- Advertisement -

The HUMANUP RL framework operates in two stages. The first stage identifies effective limb trajectories that enable a robot to stand up without strict constraints on movement smoothness or speed.

In the second stage, the framework refines the initial motions, transforming them into smooth and controlled movements that the robot can perform. These motions remain effective regardless of the robot’s position or the terrain where it falls.

The researchers tested HUMANUP in simulations and real-world settings using the Unitree G1 humanoid robot, which Unitree Robotics developed. Their results were promising, showing that the robot could autonomously recover from falls, regardless of its position or the surface beneath it.

The framework developed by the team could be refined and adapted for other humanoid robots, enabling them to recover autonomously after falling. This advancement could enhance robot capabilities and support their broader adoption in real-world applications.

Nidhi Agarwal
Nidhi Agarwal
Nidhi Agarwal is a Senior Technology Journalist at Electronics For You, specialising in embedded systems, development boards, and IoT cloud solutions. With a Master’s degree in Signal Processing, she combines strong technical knowledge with hands-on industry experience to deliver clear, insightful, and application-focused content. Nidhi began her career in engineering roles, working as a Product Engineer at Makerdemy, where she gained practical exposure to IoT systems, development platforms, and real-world implementation challenges. She has also worked as an IoT intern and robotics developer, building a solid foundation in hardware-software integration and emerging technologies. Before transitioning fully into technology journalism, she spent several years in academia as an Assistant Professor and Lecturer, teaching electronics and related subjects. This background reflects in her writing, which is structured, easy to understand, and highly educational for both students and professionals. At Electronics For You, Nidhi covers a wide range of topics including embedded development, cloud-connected devices, and next-generation electronics platforms. Her work focuses on simplifying complex technologies while maintaining technical accuracy, helping engineers, developers, and learners stay updated in a rapidly evolving ecosystem.

SHARE YOUR THOUGHTS & COMMENTS

EFY Prime

Unique DIY Projects

Electronics News

Truly Innovative Electronics

Latest DIY Videos

Electronics Components

Electronics Jobs

Calculators For Electronics