This paper refers to an activity under way at the speech recognition technology level for the development of a hands-free dialogue interaction system in the car environment. The work here presented concerns the use of two noise reduction techniques, as well as MLLR adaptation, for recognition error reduction in low and medium complexity tasks, namely connected digits and spelling with or without bigram/trigram statistical constraints. Experiments are based on the use of SpeechDat Car database, a corpus collected under real noisy conditions. Results show the additive improvements in performance, obtained by adopting noise reduction techniques and MLLR adaptatio
Colloque avec actes et comité de lecture. internationale.International audienceIn this paper, we pro...
This paper addresses the problem of hands-free speech recognition in a noisy office environment. An ...
In an advanced dialogue scenario it can be required that an Automatic Speech Recognition (ASR) syste...
This paper describes some activities being conducted at IRST with the aim of developing a technology...
Robust hands-free interaction is required for a wide diffusion of automatic speech recognition in th...
The use of noise reduction techniques for hands-free speech recognition in a car environment is inve...
This thesis is concerned with the problem of automatic recognition of speech that is contaminated wi...
A database of in-car speech for the Italian language was collected under the European projects Speec...
When considering impediments to speech recognition systems in cars, only road noise is normally take...
Robust speech recognition in car environments has been an important application and attracted great ...
The work presented in this paper aims at improving in-car speech recognition performance in presence...
Systems for noise reduction are used in speech transmission and speech input systems. In the first c...
We address issues for improving handsfree speech recognition performance in different car environmen...
Hands-free operation of a mobile phone in car raises major challenges for acoustic enhancement algor...
This paper describes an evaluation of an adaptive microphone array with respect to speech recognitio...
Colloque avec actes et comité de lecture. internationale.International audienceIn this paper, we pro...
This paper addresses the problem of hands-free speech recognition in a noisy office environment. An ...
In an advanced dialogue scenario it can be required that an Automatic Speech Recognition (ASR) syste...
This paper describes some activities being conducted at IRST with the aim of developing a technology...
Robust hands-free interaction is required for a wide diffusion of automatic speech recognition in th...
The use of noise reduction techniques for hands-free speech recognition in a car environment is inve...
This thesis is concerned with the problem of automatic recognition of speech that is contaminated wi...
A database of in-car speech for the Italian language was collected under the European projects Speec...
When considering impediments to speech recognition systems in cars, only road noise is normally take...
Robust speech recognition in car environments has been an important application and attracted great ...
The work presented in this paper aims at improving in-car speech recognition performance in presence...
Systems for noise reduction are used in speech transmission and speech input systems. In the first c...
We address issues for improving handsfree speech recognition performance in different car environmen...
Hands-free operation of a mobile phone in car raises major challenges for acoustic enhancement algor...
This paper describes an evaluation of an adaptive microphone array with respect to speech recognitio...
Colloque avec actes et comité de lecture. internationale.International audienceIn this paper, we pro...
This paper addresses the problem of hands-free speech recognition in a noisy office environment. An ...
In an advanced dialogue scenario it can be required that an Automatic Speech Recognition (ASR) syste...