TIGRIS: An Informed Sampling-based Algorithm for Informative Path Planning
Brady Moon, Satrajit Chatterjee, Sebastian Scherer

TL;DR
TIGRIS is a sampling-based algorithm that efficiently plans informative paths in high-dimensional spaces with sensor constraints, demonstrated on UAV object search, outperforming baselines by 18%.
Contribution
The paper introduces a novel informed sampling approach for high-dimensional, constrained path planning that improves information gain in large environments.
Findings
Outperforms baseline by 18% in information gain.
Effectively handles high-dimensional and constrained environments.
Demonstrated on UAV object search in large spaces.
Abstract
Informative path planning is an important and challenging problem in robotics that remains to be solved in a manner that allows for wide-spread implementation and real-world practical adoption. Among various reasons for this, one is the lack of approaches that allow for informative path planning in high-dimensional spaces and non-trivial sensor constraints. In this work we present a sampling-based approach that allows us to tackle the challenges of large and high-dimensional search spaces. This is done by performing informed sampling in the high-dimensional continuous space and incorporating potential information gain along edges in the reward estimation. This method rapidly generates a global path that maximizes information gain for the given path budget constraints. We discuss the details of our implementation for an example use case of searching for multiple objects of interest in a…
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Taxonomy
TopicsRobotic Path Planning Algorithms · Robotics and Sensor-Based Localization
