A Review on Sound Source Localization in Robotics: Focusing on Deep Learning Methods
Reza Jalayer, Masoud Jalayer, Amirali Baniasadi

TL;DR
This paper reviews recent advances in sound source localization for robotics, emphasizing deep learning methods, classical techniques, challenges, and future directions for robust and adaptable robotic auditory perception.
Contribution
It provides a robotics-focused synthesis of classical and deep learning SSL methods, highlighting recent progress, challenges, and future research directions.
Findings
Deep learning methods improve SSL accuracy in robotics.
Classical SSL techniques like TDOA and beamforming are foundational.
Identifies key challenges such as environmental robustness and source multiplicity.
Abstract
Sound source localization (SSL) adds a spatial dimension to auditory perception, allowing a system to pinpoint the origin of speech, machinery noise, warning tones, or other acoustic events, capabilities that facilitate robot navigation, human-machine dialogue, and condition monitoring. While existing surveys provide valuable historical context, they typically address general audio applications and do not fully account for robotic constraints or the latest advancements in deep learning. This review addresses these gaps by offering a robotics-focused synthesis, emphasizing recent progress in deep learning methodologies. We start by reviewing classical methods such as Time Difference of Arrival (TDOA), beamforming, Steered-Response Power (SRP), and subspace analysis. Subsequently, we delve into modern machine learning (ML) and deep learning (DL) approaches, discussing traditional ML and…
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