Bayesian Local Sampling-based Planning
Tin Lai, Philippe Morere, Fabio Ramos, Gilad Francis

TL;DR
This paper introduces a Bayesian adaptive local sampling method for motion planning that learns from past samples to efficiently navigate complex configuration spaces, especially narrow passages.
Contribution
It presents a novel Bayesian learning scheme for local sampling-based motion planning that adaptively updates the proposal distribution based on previous samples.
Findings
Faster solution discovery with fewer samples.
No noticeable performance overhead.
Effective in navigating narrow passages.
Abstract
Sampling-based planning is the predominant paradigm for motion planning in robotics. Most sampling-based planners use a global random sampling scheme to guarantee probabilistic completeness. However, most schemes are often inefficient as the samples drawn from the global proposal distribution, and do not exploit relevant local structures. Local sampling-based motion planners, on the other hand, take sequential decisions of random walks to samples valid trajectories in configuration space. However, current approaches do not adapt their strategies according to the success and failures of past samples. In this work, we introduce a local sampling-based motion planner with a Bayesian learning scheme for modelling an adaptive sampling proposal distribution. The proposal distribution is sequentially updated based on previous samples, consequently shaping it according to local obstacles and…
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Taxonomy
TopicsRobotic Path Planning Algorithms · Robot Manipulation and Learning · Robotics and Sensor-Based Localization
