Relation-guided acoustic scene classification aided with event embeddings
Yuanbo Hou, Bo Kang, Wout Van Hauwermeiren, Dick Botteldooren

TL;DR
This paper introduces a relation-guided model that leverages pseudo-labeled audio events and scene-event relations to improve acoustic scene classification accuracy in real-world datasets.
Contribution
It proposes a novel relation-guided framework that exploits inherent scene-event correlations and pseudo labels to enhance acoustic scene and event recognition.
Findings
RGASC effectively coordinates scene and event information.
Event embeddings reduce confusion between similar scenes.
Improves scene classification accuracy over other methods.
Abstract
In real life, acoustic scenes and audio events are naturally correlated. Humans instinctively rely on fine-grained audio events as well as the overall sound characteristics to distinguish diverse acoustic scenes. Yet, most previous approaches treat acoustic scene classification (ASC) and audio event classification (AEC) as two independent tasks. A few studies on scene and event joint classification either use synthetic audio datasets that hardly match the real world, or simply use the multi-task framework to perform two tasks at the same time. Neither of these two ways makes full use of the implicit and inherent relation between fine-grained events and coarse-grained scenes. To this end, this paper proposes a relation-guided ASC (RGASC) model to further exploit and coordinate the scene-event relation for the mutual benefit of scene and event recognition. The TUT Urban Acoustic Scenes…
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Taxonomy
TopicsMusic and Audio Processing · Speech and Audio Processing
