In this contribution, an acoustic event detection system based on spectro-temporal features and a two-layer hidden Markov model as back-end is proposed within the framework of the IEEE AASP challenge 'Detection and Classification of Acoustic Scenes and Events' (D-CASE). Noise reduction based on the log-spectral amplitude estimator by [1] and noise power density estimation by [2] is used for signal enhancement. Performance based on three different kinds of features is compared, i.e. for amplitude modulation spectrogram, Gabor filterbank-features and conventional Mel-frequency cepstral coefficients (MFCCs), all of them known from automatic speech recognition (ASR). The evaluation is based on the office live recordings provided within the D-CA...
The paper describes an automatic speech recognition (ASR) system for the 3rd CHiME challenge that ad...
A classification method is presented that detects the presence of speech embedded in a real acoustic...
Feature extraction methods for sound events have been traditionally based on parametric representati...
Algorithms for the automatic detection and recognition of acoustic events are increasingly gaining r...
We present a sound event detection system based on hidden Markov models. The system is evaluated wit...
In this paper, we propose a new front-end for Acoustic Event Classification tasks (AEC). First, we s...
Recent results from physiological and psychoacoustic studies indicate that spectrally and temporally...
This paper describes a newly-launched public evaluation challenge on acoustic scene classification a...
International audienceThis paper describes a newly-launched public evaluation challenge on acoustic ...
Automatic detection of different types of acoustic events is an interesting problem in soundtrack pr...
The speech signal is inherently characterized by its variations in time, which get reflected as vari...
The objective of this research is to develop feature extraction and classification techniques for th...
In this paper, we propose a new front-end for Acoustic Event Classification tasks (AEC). First, we s...
Research work on automatic speech recognition and automatic music transcription has been around for ...
Previously we presented an auditory-inspired feed-forward architecture which achieves good performan...
The paper describes an automatic speech recognition (ASR) system for the 3rd CHiME challenge that ad...
A classification method is presented that detects the presence of speech embedded in a real acoustic...
Feature extraction methods for sound events have been traditionally based on parametric representati...
Algorithms for the automatic detection and recognition of acoustic events are increasingly gaining r...
We present a sound event detection system based on hidden Markov models. The system is evaluated wit...
In this paper, we propose a new front-end for Acoustic Event Classification tasks (AEC). First, we s...
Recent results from physiological and psychoacoustic studies indicate that spectrally and temporally...
This paper describes a newly-launched public evaluation challenge on acoustic scene classification a...
International audienceThis paper describes a newly-launched public evaluation challenge on acoustic ...
Automatic detection of different types of acoustic events is an interesting problem in soundtrack pr...
The speech signal is inherently characterized by its variations in time, which get reflected as vari...
The objective of this research is to develop feature extraction and classification techniques for th...
In this paper, we propose a new front-end for Acoustic Event Classification tasks (AEC). First, we s...
Research work on automatic speech recognition and automatic music transcription has been around for ...
Previously we presented an auditory-inspired feed-forward architecture which achieves good performan...
The paper describes an automatic speech recognition (ASR) system for the 3rd CHiME challenge that ad...
A classification method is presented that detects the presence of speech embedded in a real acoustic...
Feature extraction methods for sound events have been traditionally based on parametric representati...