International audienceThis paper presents a general audio classification approach inspired by our modest knowledge about the human perception of sound. Simple psychoacoustic experiments show that the relation between short term spectral features has a great impact on the human audio classification performance. For instance, short term spectral features extracted from speech sound can be perceived as non-speech sounds if organized in a special way in time. We have developed the idea of incorporating several consecutive spectral features when modelling the audio signal in relatively long term time windows. The modelling scheme that we propose, piecewise Gaussian modelling (PGM), was combined with a neural network to develop a general audio cl...
In this paper, we propose a method to improve sound classification performance by combining signal f...
We describe a content-based audio classification algorithm based on novel multiscale spectro-tempora...
Human-like performance by machines in tasks of speech and audio processing has remained an elusive g...
International audienceThe audio channel conveys rich clues for content-based multimedia indexing. In...
International audienceThe audio channel conveys rich clues for content-based multimedia indexing. In...
Several factors affecting the automatic classification of musical audio signals are examined. Classi...
Audio classification can be used in many different applications. Rapid increase in the amount of aud...
This paper describes the work done on thedevelopment of an audio classification system. Audio record...
Audio signal classification (ASC) consists of extracting relevant features from a sound, and of usin...
The human auditory system is very well matched to both hu-man speech and environmental sounds. There...
Four audio feature sets are evaluated in their ability to classify five general audio classes and se...
Audio signal classification consists of extracting physical and perceptual features from a sound, an...
We introduce a system for generalised sound classification and similarity using a machine-learning f...
This thesis introduces a computer model that incorporates responses similar to those found in the co...
We focus the attention on the problem of audio classification in speech and music for multimedia ap...
In this paper, we propose a method to improve sound classification performance by combining signal f...
We describe a content-based audio classification algorithm based on novel multiscale spectro-tempora...
Human-like performance by machines in tasks of speech and audio processing has remained an elusive g...
International audienceThe audio channel conveys rich clues for content-based multimedia indexing. In...
International audienceThe audio channel conveys rich clues for content-based multimedia indexing. In...
Several factors affecting the automatic classification of musical audio signals are examined. Classi...
Audio classification can be used in many different applications. Rapid increase in the amount of aud...
This paper describes the work done on thedevelopment of an audio classification system. Audio record...
Audio signal classification (ASC) consists of extracting relevant features from a sound, and of usin...
The human auditory system is very well matched to both hu-man speech and environmental sounds. There...
Four audio feature sets are evaluated in their ability to classify five general audio classes and se...
Audio signal classification consists of extracting physical and perceptual features from a sound, an...
We introduce a system for generalised sound classification and similarity using a machine-learning f...
This thesis introduces a computer model that incorporates responses similar to those found in the co...
We focus the attention on the problem of audio classification in speech and music for multimedia ap...
In this paper, we propose a method to improve sound classification performance by combining signal f...
We describe a content-based audio classification algorithm based on novel multiscale spectro-tempora...
Human-like performance by machines in tasks of speech and audio processing has remained an elusive g...