International audienceFew-shot sound event detection is the task of detecting sound events, despite having only a few labelled examples of the class of interest. This framework is particularly useful in bioacoustics, where often there is a need to annotate very long recordings but the expert annotator time is limited. This paper presents an overview of the second edition of the few-shot bioacoustic sound event detection task included in the DCASE 2022 challenge. A detailed description of the task objectives, dataset, and baselines is presented, together with the main results obtained and characteristics of the submitted systems. This task received submissions from 15 different teams from which 13 scored higher than the baselines. The highes...
Sound event detection is to infer the event by understanding the surrounding environmental sounds. D...
Although prototypical network (ProtoNet) has proved to be an effective method for few-shot sound eve...
The problem of training a deep neural network with a small set of positive samples is known as few-s...
International audienceFew-shot bioacoustic event detection consists in detecting sound events of spe...
International audienceAutomatic detection and classification of animal sounds has many applications ...
In this paper we study two major challenges in few-shot bioacoustic event detection: variable event ...
First release of the pipeline for Few-shot bioacoustic event detection using BEATs, Adaptive frame-s...
Few-shot bioacoustic event detection is a task that detects the occurrence time of a novel sound giv...
Few-shot learning is a type of classification through which predictions are made based on a limited ...
General Description The evaluation set for task 5 of DCASE 2021 "Few-shot Bioacoustic Event Detecti...
General Description The evaluation set for task 5 of DCASE 2022 "Few-shot Bioacoustic Event Detecti...
Each edition of the challenge on Detection and Classification of Acoustic Scenes and Events (DCASE) ...
International audienceEach edition of the challenge on Detection and Classification of Acoustic Scen...
General Description The evaluation set for task 5 of DCASE 2023 "Few-shot Bioacoustic Event Detecti...
Everyday environments are overflowed with a wide variety of acoustic events, either produced by huma...
Sound event detection is to infer the event by understanding the surrounding environmental sounds. D...
Although prototypical network (ProtoNet) has proved to be an effective method for few-shot sound eve...
The problem of training a deep neural network with a small set of positive samples is known as few-s...
International audienceFew-shot bioacoustic event detection consists in detecting sound events of spe...
International audienceAutomatic detection and classification of animal sounds has many applications ...
In this paper we study two major challenges in few-shot bioacoustic event detection: variable event ...
First release of the pipeline for Few-shot bioacoustic event detection using BEATs, Adaptive frame-s...
Few-shot bioacoustic event detection is a task that detects the occurrence time of a novel sound giv...
Few-shot learning is a type of classification through which predictions are made based on a limited ...
General Description The evaluation set for task 5 of DCASE 2021 "Few-shot Bioacoustic Event Detecti...
General Description The evaluation set for task 5 of DCASE 2022 "Few-shot Bioacoustic Event Detecti...
Each edition of the challenge on Detection and Classification of Acoustic Scenes and Events (DCASE) ...
International audienceEach edition of the challenge on Detection and Classification of Acoustic Scen...
General Description The evaluation set for task 5 of DCASE 2023 "Few-shot Bioacoustic Event Detecti...
Everyday environments are overflowed with a wide variety of acoustic events, either produced by huma...
Sound event detection is to infer the event by understanding the surrounding environmental sounds. D...
Although prototypical network (ProtoNet) has proved to be an effective method for few-shot sound eve...
The problem of training a deep neural network with a small set of positive samples is known as few-s...