We present a novel, exemplar-based method for audio event detection based on non-negative matrix factorisation. Building on recent work in noise robust automatic speech recognition, we model events as a linear combination of dictionary atoms, and mixtures as a linear combination of overlapping events. The weights of activated atoms in an observation serve directly as evidence for the underlying event classes. The atoms in the dictionary span multiple frames and are created by extracting all possible fixed-length exemplars from the training data. To combat data scarcity of small training datasets, we propose to artificially augment the amount of training data by linear time warping in the feature domain at multiple rates. The method is evalu...
The lack of strongly labeled data can limit the potential of a Sound Event Detection (SED) system tr...
In this paper, we propose a new front-end for Acoustic Event Classification tasks (AEC). First, we s...
We present a self-learning algorithm using a bottom-up based approach to automatically discover, acq...
Methods for detection of overlapping sound events in au-dio involve matrix factorization approaches,...
Methods for detection of overlapping sound events in audio involve matrix factorization approaches, ...
Automatic detection of different types of acoustic events is an interesting problem in soundtrack pr...
Environmental sounds occur in a complex mixture. Recognizing, isolating and interpreting different e...
Sound event detection in real-world environments suffers from the interference of non-stationary and...
In this paper, we investigate the performance of classifier-based non-negative matrix factorization ...
In this paper, we propose two methods for polyphonic Acoustic Event Detection (AED) in real life env...
Non-negative Matrix Factorization (NMF) is a well established tool for audio analysis. However, it i...
Acoustic Event Detection (AED) is an important task of machine listening which, in recent years, has...
Acoustic event classification for monitoring applications is becoming feasible thanks to the increas...
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...
The lack of strongly labeled data can limit the potential of a Sound Event Detection (SED) system tr...
In this paper, we propose a new front-end for Acoustic Event Classification tasks (AEC). First, we s...
We present a self-learning algorithm using a bottom-up based approach to automatically discover, acq...
Methods for detection of overlapping sound events in au-dio involve matrix factorization approaches,...
Methods for detection of overlapping sound events in audio involve matrix factorization approaches, ...
Automatic detection of different types of acoustic events is an interesting problem in soundtrack pr...
Environmental sounds occur in a complex mixture. Recognizing, isolating and interpreting different e...
Sound event detection in real-world environments suffers from the interference of non-stationary and...
In this paper, we investigate the performance of classifier-based non-negative matrix factorization ...
In this paper, we propose two methods for polyphonic Acoustic Event Detection (AED) in real life env...
Non-negative Matrix Factorization (NMF) is a well established tool for audio analysis. However, it i...
Acoustic Event Detection (AED) is an important task of machine listening which, in recent years, has...
Acoustic event classification for monitoring applications is becoming feasible thanks to the increas...
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...
The lack of strongly labeled data can limit the potential of a Sound Event Detection (SED) system tr...
In this paper, we propose a new front-end for Acoustic Event Classification tasks (AEC). First, we s...
We present a self-learning algorithm using a bottom-up based approach to automatically discover, acq...