Methods for detection of overlapping sound events in audio involve matrix factorization approaches, often assigning separated components to event classes. We present a method that bypasses the supervised construction of class models. The method learns the components as a non-negative dictionary in a coupled matrix factorization problem, where the spectral representation and the class activity annotation of the audio signal share the activation matrix. In testing, the dictionaries are used to estimate directly the class activations. For dealing with large amount of training data, two methods are proposed for reducing the size of the dictionary. The methods were tested on a database of real life recordings, and outperformed previous approache...
Current computer vision techniques can effectively monitor gross activities in sparse environments. ...
In this paper, a system for overlapping acoustic event detection is proposed, which models the tempo...
In this study, we propose an unsupervised method for dictionary learning in audio signals. The new m...
Methods for detection of overlapping sound events in au-dio involve matrix factorization approaches,...
We present a novel, exemplar-based method for audio event detection based on non-negative matrix fac...
In this paper, we investigate the performance of classifier-based non-negative matrix factorization ...
Environmental sounds occur in a complex mixture. Recognizing, isolating and interpreting different e...
International audienceIn this paper, we investigate the problem of real-time detection of overlappin...
This paper proposes a sound event detection system for nat-ural multisource environments, using a so...
Acoustic event classification for monitoring applications is becoming feasible thanks to the increas...
In this paper, we propose two methods for polyphonic Acoustic Event Detection (AED) in real life env...
Acoustic event classification for monitoring applications is becoming feasible thanks to the increas...
Automatic detection of different types of acoustic events is an interesting problem in soundtrack pr...
International audience—In this paper, a system for polyphonic sound event detection and tracking is ...
The objective of the thesis is to develop techniques that optimize the performances of sound event d...
Current computer vision techniques can effectively monitor gross activities in sparse environments. ...
In this paper, a system for overlapping acoustic event detection is proposed, which models the tempo...
In this study, we propose an unsupervised method for dictionary learning in audio signals. The new m...
Methods for detection of overlapping sound events in au-dio involve matrix factorization approaches,...
We present a novel, exemplar-based method for audio event detection based on non-negative matrix fac...
In this paper, we investigate the performance of classifier-based non-negative matrix factorization ...
Environmental sounds occur in a complex mixture. Recognizing, isolating and interpreting different e...
International audienceIn this paper, we investigate the problem of real-time detection of overlappin...
This paper proposes a sound event detection system for nat-ural multisource environments, using a so...
Acoustic event classification for monitoring applications is becoming feasible thanks to the increas...
In this paper, we propose two methods for polyphonic Acoustic Event Detection (AED) in real life env...
Acoustic event classification for monitoring applications is becoming feasible thanks to the increas...
Automatic detection of different types of acoustic events is an interesting problem in soundtrack pr...
International audience—In this paper, a system for polyphonic sound event detection and tracking is ...
The objective of the thesis is to develop techniques that optimize the performances of sound event d...
Current computer vision techniques can effectively monitor gross activities in sparse environments. ...
In this paper, a system for overlapping acoustic event detection is proposed, which models the tempo...
In this study, we propose an unsupervised method for dictionary learning in audio signals. The new m...