Feature extraction methods for sound events have been traditionally based on parametric representations specifically developed for speech signals, such as the well-known Mel Frequency Cepstrum Coefficients (MFCC). However, the discrimination capabilities of these features for Acoustic Event Classification (AEC) tasks could be enhanced by taking into account the spectro-temporal structure of acoustic event signals. In this paper, a new front-end for AEC which incorporates this specific information is proposed. It consists of two different stages: short-time feature extraction and temporal feature integration. The first module aims at providing a better spectral representation of the different acoustic events on a frame-by-frame basis, by mea...
In this paper, a class of algorithms for automatic classification of individual musical instrument s...
International audienceThis paper introduces improvements to nonnegative feature learning-based metho...
This paper explores the use of three different two-dimensional time-frequency features for audio eve...
Feature extraction methods for sound events have been traditionally based on parametric representati...
Proceedings of: 14th Annual Conference of the International Speech Communication Association. Lyon,...
Proceedings of: 6th International Conference The Non-Linear Speech Processing (NOLISP 2013). Mons, B...
Automatic detection of different types of acoustic events is an interesting problem in soundtrack pr...
In this paper, we propose a new front-end for Acoustic Event Classification tasks ( AEC). First, we ...
In this contribution, an acoustic event detection system based on spectro-temporal features and a tw...
International audienceIn this paper, we study the usefulness of various matrix factorization methods...
Models based on diverse attention mechanisms have recently shined in tasks related to acoustic event...
Algorithms for the automatic detection and recognition of acoustic events are increasingly gaining r...
We present a novel, exemplar-based method for audio event detection based on non-negative matrix fac...
Driven by the demand of information retrieval, video editing and human-computer interface, in this p...
It takes more time to think of a silent scene, action or event than finding one that emanates sound....
In this paper, a class of algorithms for automatic classification of individual musical instrument s...
International audienceThis paper introduces improvements to nonnegative feature learning-based metho...
This paper explores the use of three different two-dimensional time-frequency features for audio eve...
Feature extraction methods for sound events have been traditionally based on parametric representati...
Proceedings of: 14th Annual Conference of the International Speech Communication Association. Lyon,...
Proceedings of: 6th International Conference The Non-Linear Speech Processing (NOLISP 2013). Mons, B...
Automatic detection of different types of acoustic events is an interesting problem in soundtrack pr...
In this paper, we propose a new front-end for Acoustic Event Classification tasks ( AEC). First, we ...
In this contribution, an acoustic event detection system based on spectro-temporal features and a tw...
International audienceIn this paper, we study the usefulness of various matrix factorization methods...
Models based on diverse attention mechanisms have recently shined in tasks related to acoustic event...
Algorithms for the automatic detection and recognition of acoustic events are increasingly gaining r...
We present a novel, exemplar-based method for audio event detection based on non-negative matrix fac...
Driven by the demand of information retrieval, video editing and human-computer interface, in this p...
It takes more time to think of a silent scene, action or event than finding one that emanates sound....
In this paper, a class of algorithms for automatic classification of individual musical instrument s...
International audienceThis paper introduces improvements to nonnegative feature learning-based metho...
This paper explores the use of three different two-dimensional time-frequency features for audio eve...