A machine learning framework for acoustic reflector mapping
Usama Saqib, Letizia Marchegiani, Jesper Rindom Jensen

TL;DR
This paper introduces a machine learning framework that enhances acoustic reflector mapping in noisy environments, improving traditional echolocation techniques for robot navigation under adverse conditions.
Contribution
The paper presents a novel machine learning approach that effectively removes noise and artifacts from acoustic maps, significantly improving their accuracy in challenging environments.
Findings
Reliable operation at an SNR of -10dB
Effective mapping in various reverberant environments
Successful mapping of a simulated room outline
Abstract
Sonar-based indoor mapping systems have been widely employed in robotics for several decades. While such systems are still the mainstream in underwater and pipe inspection settings, the vulnerability to noise reduced, over time, their general widespread usage in favour of other modalities(\textit{e.g.}, cameras, lidars), whose technologies were encountering, instead, extraordinary advancements. Nevertheless, mapping physical environments using acoustic signals and echolocation can bring significant benefits to robot navigation in adverse scenarios, thanks to their complementary characteristics compared to other sensors. Cameras and lidars, indeed, struggle in harsh weather conditions, when dealing with lack of illumination, or with non-reflective walls. Yet, for acoustic sensors to be able to generate accurate maps, noise has to be properly and effectively handled. Traditional signal…
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Taxonomy
TopicsUnderwater Acoustics Research
