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Few-Shot Acoustic Event Detection Via Meta Learning

Bowen Shi, Ming Sun, Krishna C. Puvvada, Chieh-Chi Kao, Spyros Matsoukas, Chao Wang

202061 citationsDOI

Abstract

We study few-shot acoustic event detection (AED) in this paper. Few-shot learning enables detection of new events with very limited labeled data. Compared to other research areas like computer vision, few-shot learning for audio recognition has been under-studied. We formulate few-shot AED problem and explore different ways of utilizing traditional supervised methods for this setting as well as a variety of meta-learning approaches, which are conventionally used to solve few-shot classification problem. Compared to supervised baselines, meta-learning models achieve superior performance, thus showing its effectiveness on generalization to new audio events. Our analysis including impact of initialization and domain discrepancy further validate the advantage of meta-learning approaches in few-shot AED.

Topics & Concepts

Computer scienceShot (pellet)Artificial intelligenceMeta learning (computer science)InitializationEvent (particle physics)GeneralizationMachine learningSupervised learningDomain (mathematical analysis)Speech recognitionTask (project management)Artificial neural networkEngineeringSystems engineeringChemistryMathematical analysisPhysicsQuantum mechanicsOrganic chemistryMathematicsProgramming languageMusic and Audio ProcessingSpeech and Audio ProcessingWater Systems and Optimization
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