UPP: Unified Path Planner with Adaptive Safety and Optimality
Journal:
arXiv
Published Date:
May 29, 2025
Abstract
We are surrounded by robots helping us perform complex tasks. Robots have a
wide range of applications, from industrial automation to personalized
assistance. However, with great technological innovation come significant
challenges. One of the major challenges in robotics is path planning. Despite
advancements such as graph search, sampling, and potential field methods, most
path planning algorithms focus either on optimality or on safety. Very little
research addresses both simultaneously. We propose a Unified Path Planner (UPP)
that uses modified heuristics and a dynamic safety cost function to balance
safety and optimality. The level of safety can be adjusted via tunable
parameters, trading off against computational complexity. We demonstrate the
planner's performance in simulations, showing how parameter variation affects
results. UPP is compared with various traditional and safe-optimal planning
algorithms across different scenarios. We also validate it on a TurtleBot,
where the robot successfully finds safe and sub-optimal paths.