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Learning Neural Observer-Predictor Models for Limb-level Sampling-based Locomotion Planning

Published: October 26, 2025 | arXiv ID: 2510.22789v1

By: Abhijeet M. Kulkarni, Ioannis Poulakakis, Guoquan Huang

Potential Business Impact:

Robots can now plan safe steps around obstacles.

Business Areas:
Motion Capture Media and Entertainment, Video

Accurate full-body motion prediction is essential for the safe, autonomous navigation of legged robots, enabling critical capabilities like limb-level collision checking in cluttered environments. Simplified kinematic models often fail to capture the complex, closed-loop dynamics of the robot and its low-level controller, limiting their predictions to simple planar motion. To address this, we present a learning-based observer-predictor framework that accurately predicts this motion. Our method features a neural observer with provable UUB guarantees that provides a reliable latent state estimate from a history of proprioceptive measurements. This stable estimate initializes a computationally efficient predictor, designed for the rapid, parallel evaluation of thousands of potential trajectories required by modern sampling-based planners. We validated the system by integrating our neural predictor into an MPPI-based planner on a Vision 60 quadruped. Hardware experiments successfully demonstrated effective, limb-aware motion planning in a challenging, narrow passage and over small objects, highlighting our system's ability to provide a robust foundation for high-performance, collision-aware planning on dynamic robotic platforms.

Country of Origin
πŸ‡¬πŸ‡· πŸ‡ΊπŸ‡Έ United States, Greece

Page Count
9 pages

Category
Computer Science:
Robotics