Litcius/Paper detail

Few-Shot Emergency Siren Detection

Michela Cantarini, Leonardo Gabrielli, Stefano Squartini

2022Sensors17 citationsDOIOpen Access PDF

Abstract

It is a well-established practice to build a robust system for sound event detection by training supervised deep learning models on large datasets, but audio data collection and labeling are often challenging and require large amounts of effort. This paper proposes a workflow based on few-shot metric learning for emergency siren detection performed in steps: prototypical networks are trained on publicly available sources or synthetic data in multiple combinations, and at inference time, the best knowledge learned in associating a sound with its class representation is transferred to identify ambulance sirens, given only a few instances for the prototype computation. Performance is evaluated on siren recordings acquired by sensors inside and outside the cabin of an equipped car, investigating the contribution of filtering techniques for background noise reduction. The results show the effectiveness of the proposed approach, achieving AUPRC scores equal to 0.86 and 0.91 in unfiltered and filtered conditions, respectively, outperforming a convolutional baseline model with and without fine-tuning for domain adaptation. Extensive experiments conducted on several recording sensor placements prove that few-shot learning is a reliable technique even in real-world scenarios and gives valuable insights for developing an in-car emergency vehicle detection system.

Topics & Concepts

Computer scienceSiren (mythology)InferenceArtificial intelligenceMetric (unit)Machine learningWorkflowConvolutional neural networkReal-time computingShot (pellet)Data miningEngineeringDatabaseArtChemistryLiteratureOrganic chemistryOperations managementMusic and Audio ProcessingSpeech and Audio ProcessingSpeech Recognition and Synthesis