PIP-Loco: A Proprioceptive Infinite Horizon Planning Framework for Quadrupedal Robot Locomotion
Aditya Shirwatkar, Naman Saxena, Kishore Chandra, Shishir Kolathaya

TL;DR
PIP-Loco combines proprioceptive planning with reinforcement learning to enable quadrupedal robots to perform robust, constraint-aware locomotion over diverse terrains by integrating MPC principles with learned internal models.
Contribution
It introduces a novel framework that integrates MPC-inspired internal models with RL, enabling scalable, constraint-aware, and robust quadrupedal locomotion.
Findings
Enhanced robustness to terrain variations
Successful deployment on hardware
Improved exploration and planning capabilities
Abstract
A core strength of Model Predictive Control (MPC) for quadrupedal locomotion has been its ability to enforce constraints and provide interpretability of the sequence of commands over the horizon. However, despite being able to plan, MPC struggles to scale with task complexity, often failing to achieve robust behavior on rapidly changing surfaces. On the other hand, model-free Reinforcement Learning (RL) methods have outperformed MPC on multiple terrains, showing emergent motions but inherently lack any ability to handle constraints or perform planning. To address these limitations, we propose a framework that integrates proprioceptive planning with RL, allowing for agile and safe locomotion behaviors through the horizon. Inspired by MPC, we incorporate an internal model that includes a velocity estimator and a Dreamer module. During training, the framework learns an expert policy and an…
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Taxonomy
TopicsRobotic Path Planning Algorithms · Robotic Locomotion and Control · Modular Robots and Swarm Intelligence
