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Temporally Consistent Sound Source Localization via Self-Supervised Losses

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posted on 2024-06-18, 19:05 authored by Tony Misic
Humans derive contextual information from auditory and visual cues. In this thesis, we focus on improving sound source localization in videos, which is the correlation of au- dio signals to pixels. In this thesis, we study self-supervised losses with the goal of improving both accuracy and temporal consistency. We introduce a new evaluation benchmark that includes temporal ground truth segmentations, we refer to this benchmark as the "Temporally Way Harder" dataset. We demonstrate both qualitatively and quantitatively that our method outperforms current state-of-the-art sound source localization methods in terms of accuracy and temporal consistency on an extant data set and our introduced data set. We motivate our work with ablations showing the existence of centre-bias and temporal inconsistency in past work. Furthermore, we introduce a quantitative metric for examining temporal consistency in sound source localization.

History

Language

eng

Degree

  • Master of Science

Program

  • Computer Science

Granting Institution

Ryerson University

LAC Thesis Type

  • Thesis

Thesis Advisor

Nariman Farsad & Kosta Derpanis

Year

2022

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