A Heuristic Informative-Path-Planning Algorithm for Autonomous Mapping of Unknown Areas
Mobolaji O. Orisatoki, Mahdi Amouzadi, Arash M. Dizqah

TL;DR
This paper introduces a heuristic algorithm for autonomous mapping that efficiently explores unknown environments by estimating potential gains and navigating locally, achieving near-optimal results compared to a known map benchmark.
Contribution
It presents a novel heuristic informative path planning algorithm and a benchmark solution for evaluating autonomous mapping efficiency in unknown areas.
Findings
Achieves 70-80% of the benchmark's mapped area per distance
Demonstrates near-optimal path generation in various scenarios
Provides a new method for evaluating mapping algorithms
Abstract
Informative path planning algorithms are of paramount importance in applications like disaster management to efficiently gather information through a priori unknown environments. This is, however, a complex problem that involves finding a globally optimal path that gathers the maximum amount of information (e.g., the largest map with a minimum travelling distance) while using partial and uncertain local measurements. This paper addresses this problem by proposing a novel heuristic algorithm that continuously estimates the potential mapping gain for different sub-areas across the partially created map, and then uses these estimations to locally navigate the robot. Furthermore, this paper presents a novel algorithm to calculate a benchmark solution, where the map is a priori known to the planar, to evaluate the efficacy of the developed heuristic algorithm over different test scenarios.…
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Taxonomy
TopicsRobotic Path Planning Algorithms · Robotics and Sensor-Based Localization · Optimization and Search Problems
