Computer Science > Robotics
[Submitted on 25 Mar 2024]
Title:Real-time Model Predictive Control with Zonotope-Based Neural Networks for Bipedal Social Navigation
View PDF HTML (experimental)Abstract:This study addresses the challenge of bipedal navigation in a dynamic human-crowded environment, a research area that remains largely underexplored in the field of legged navigation. We propose two cascaded zonotope-based neural networks: a Pedestrian Prediction Network (PPN) for pedestrians' future trajectory prediction and an Ego-agent Social Network (ESN) for ego-agent social path planning. Representing future paths as zonotopes allows for efficient reachability-based planning and collision checking. The ESN is then integrated with a Model Predictive Controller (ESN-MPC) for footstep planning for our bipedal robot Digit designed by Agility Robotics. ESN-MPC solves for a collision-free optimal trajectory by optimizing through the gradients of ESN. ESN-MPC optimal trajectory is sent to the low-level controller for full-order simulation of Digit. The overall proposed framework is validated with extensive simulations on randomly generated initial settings with varying human crowd densities.
Submission history
From: Abdulaziz Shamsah [view email][v1] Mon, 25 Mar 2024 07:12:51 UTC (6,242 KB)
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