Although prototypical network (ProtoNet) has proved to be an effective method for few-shot sound event detection, two problems still exist. Firstly, the small-scaled support set is insufficient so that the class prototypes may not represent the class center accurately. Secondly, the feature extractor is task-agnostic (or class-agnostic): the feature extractor is trained with base-class data and directly applied to unseen-class data. To address these issues, we present a novel mutual learning framework with transductive learning, which aims at iteratively updating the class prototypes and feature extractor. More specifically, we propose to update class prototypes with transductive inference to make the class prototypes as close to the true c...
Large-scale sound recognition data sets typically consist of acoustic recordings obtained from multi...
Since when very young, we can quickly learn new concepts, and distinguish between different kinds of...
International audienceTraining a sound event detection algorithm on a heterogeneous dataset includin...
Few-shot bioacoustic event detection is a task that detects the occurrence time of a novel sound giv...
Sound event detection is to infer the event by understanding the surrounding environmental sounds. D...
Few-shot learning is a type of classification through which predictions are made based on a limited ...
International audienceFew-shot sound event detection is the task of detecting sound events, despite ...
In this paper we study two major challenges in few-shot bioacoustic event detection: variable event ...
International audienceFew-shot bioacoustic event detection consists in detecting sound events of spe...
In many situations, we would like to hear desired sound events (SEs) while being able to ignore inte...
Automatic detection and classification of animal sounds has many applications in biodiversity monito...
Everyday sounds cover a considerable range of sound categories in our daily life, yet for certain so...
Neuroevolution techniques combine genetic algorithms with artificial neural networks, some of them e...
In this paper, we present a method called HODGEPODGE\footnotemark[1] for large-scale detection of so...
International audienceThe design of new methods and models when only weakly-labeled data are availab...
Large-scale sound recognition data sets typically consist of acoustic recordings obtained from multi...
Since when very young, we can quickly learn new concepts, and distinguish between different kinds of...
International audienceTraining a sound event detection algorithm on a heterogeneous dataset includin...
Few-shot bioacoustic event detection is a task that detects the occurrence time of a novel sound giv...
Sound event detection is to infer the event by understanding the surrounding environmental sounds. D...
Few-shot learning is a type of classification through which predictions are made based on a limited ...
International audienceFew-shot sound event detection is the task of detecting sound events, despite ...
In this paper we study two major challenges in few-shot bioacoustic event detection: variable event ...
International audienceFew-shot bioacoustic event detection consists in detecting sound events of spe...
In many situations, we would like to hear desired sound events (SEs) while being able to ignore inte...
Automatic detection and classification of animal sounds has many applications in biodiversity monito...
Everyday sounds cover a considerable range of sound categories in our daily life, yet for certain so...
Neuroevolution techniques combine genetic algorithms with artificial neural networks, some of them e...
In this paper, we present a method called HODGEPODGE\footnotemark[1] for large-scale detection of so...
International audienceThe design of new methods and models when only weakly-labeled data are availab...
Large-scale sound recognition data sets typically consist of acoustic recordings obtained from multi...
Since when very young, we can quickly learn new concepts, and distinguish between different kinds of...
International audienceTraining a sound event detection algorithm on a heterogeneous dataset includin...