Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

DiPPeR: Diffusion-based 2D Path Planner applied on Legged Robots

About

In this work, we present DiPPeR, a novel and fast 2D path planning framework for quadrupedal locomotion, leveraging diffusion-driven techniques. Our contributions include a scalable dataset generator for map images and corresponding trajectories, an image-conditioned diffusion planner for mobile robots, and a training/inference pipeline employing CNNs. We validate our approach in several mazes, as well as in real-world deployment scenarios on Boston Dynamic's Spot and Unitree's Go1 robots. DiPPeR performs on average 23 times faster for trajectory generation against both search based and data driven path planning algorithms with an average of 87% consistency in producing feasible paths of various length in maps of variable size, and obstacle structure. Website: https://rpl-cs-ucl.github.io/DiPPeR

Jianwei Liu, Maria Stamatopoulou, Dimitrios Kanoulas• 2023

Related benchmarks

TaskDatasetResultRank
Floorplan estimationHouseExpo Sparse trajectory density
F1 Score77
8
Floorplan estimationHouseExpo Moderate trajectory density
F1 Score77
8
Floorplan estimationHouseExpo Dense trajectory density
F1 Score76
8
Showing 3 of 3 rows

Other info

Follow for update