We describe a content-based audio classification algorithm based on novel multiscale spectro-temporal modulation features inspired by a model of auditory cortical processing. The task explored is to discriminate speech from nonspeech consisting of animal vocalizations, music, and environmental sounds. Although this is a relatively easy task for humans, it is still difficult to automate well, especially in noisy and reverberant environments. The auditory model captures basic processes occurring from the early cochlear stages to the central cortical areas. The model generates a multidimensional spectro-temporal representation of the sound, which is then analyzed by a multilinear dimensionality reduction technique and classified by a support v...
Many computational theories have been developed to improve artificial phonetic classification perfor...
Neural processing of sounds in the dorsal and ventral streams of the (human) auditory cortex is opti...
International audienceThis paper presents a general audio classification approach inspired by our mo...
We describe a content-based audio classification algorithm based on novel multiscale spectro-tempora...
A novel approach for content based audio classification is presented based on multiscale spectro-tem...
We describe a content-based audio classification algorithm based on novel multiscale spectrotemporal...
This thesis introduces a computer model that incorporates responses similar to those found in the co...
This thesis introduces a computer model that incorporates responses similar to those found in the co...
In this work, we adopt an information theoretic approach- the Information Bottleneck method- to extr...
In this work, we adopt an information theoretic approach- the Information Bottleneck method- to extr...
The human auditory system is very well matched to both hu-man speech and environmental sounds. There...
This paper introduces a novel set of non-linear spectro-temporal features that improve automatic spe...
Animals throughout the animal kingdom excel at extracting individual sounds from competing backgroun...
Many computational theories have been developed to improve artificial phonetic classification perfor...
Recent studies of biological auditory processing have revealed that sophisticated spectrotemporal a...
Many computational theories have been developed to improve artificial phonetic classification perfor...
Neural processing of sounds in the dorsal and ventral streams of the (human) auditory cortex is opti...
International audienceThis paper presents a general audio classification approach inspired by our mo...
We describe a content-based audio classification algorithm based on novel multiscale spectro-tempora...
A novel approach for content based audio classification is presented based on multiscale spectro-tem...
We describe a content-based audio classification algorithm based on novel multiscale spectrotemporal...
This thesis introduces a computer model that incorporates responses similar to those found in the co...
This thesis introduces a computer model that incorporates responses similar to those found in the co...
In this work, we adopt an information theoretic approach- the Information Bottleneck method- to extr...
In this work, we adopt an information theoretic approach- the Information Bottleneck method- to extr...
The human auditory system is very well matched to both hu-man speech and environmental sounds. There...
This paper introduces a novel set of non-linear spectro-temporal features that improve automatic spe...
Animals throughout the animal kingdom excel at extracting individual sounds from competing backgroun...
Many computational theories have been developed to improve artificial phonetic classification perfor...
Recent studies of biological auditory processing have revealed that sophisticated spectrotemporal a...
Many computational theories have been developed to improve artificial phonetic classification perfor...
Neural processing of sounds in the dorsal and ventral streams of the (human) auditory cortex is opti...
International audienceThis paper presents a general audio classification approach inspired by our mo...