A Cross-Environment and Cross-Embodiment Path Planning Framework via a Conditional Diffusion Model
Mehran Ghafarian Tamizi, Homayoun Honari, Amir Mehdi Soufi Enayati, Aleksey Nozdryn-Plotnicki, Homayoun Najjaran

TL;DR
This paper introduces GADGET, a diffusion-based path planning framework that generalizes across unseen environments and robot types without retraining, ensuring safe, efficient trajectories through a hybrid conditioning mechanism.
Contribution
GADGET is the first diffusion model for path planning that combines environment awareness with real-time safety guidance, enabling zero-shot transfer across environments and robotic embodiments.
Findings
High success rates in diverse environments
Effective collision avoidance with CBF guidance
Successful real-world robot trajectory execution
Abstract
Path planning for a robotic system in high-dimensional cluttered environments needs to be efficient, safe, and adaptable for different environments and hardware. Conventional methods face high computation time and require extensive parameter tuning, while prior learning-based methods still fail to generalize effectively. The primary goal of this research is to develop a path planning framework capable of generalizing to unseen environments and new robotic manipulators without the need for retraining. We present GADGET (Generalizable and Adaptive Diffusion-Guided Environment-aware Trajectory generation), a diffusion-based planning model that generates joint-space trajectories conditioned on voxelized scene representations as well as start and goal configurations. A key innovation is GADGET's hybrid dual-conditioning mechanism that combines classifier-free guidance via learned scene…
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Taxonomy
TopicsRobotic Path Planning Algorithms · Robot Manipulation and Learning · Robotic Locomotion and Control
