Children speech recognition based on short-term spectral features is a challenging task. One of the reasons is that children speech has high fundamental frequency that is comparable to formant frequency values. Furthermore, as children grow, their vocal apparatus also undergoes changes. This presents difficulties in extracting standard short-term spectral-based features reliably for speech recognition. In recent years, novel acoustic modeling methods have emerged that learn both the feature and phone classifier in an end-to-end manner from the raw speech signal. Through an investigation on PF-STAR corpus we show that children speech recognition can be improved using end-to-end acoustic modeling methods
Until the last couple of decades, research on speech acquisition generally assumed that infants were...
This paper presents several acoustic analyses carried out on read speech collected from Italian chil...
In the last two decades, statistical clustering models have emerged as a dominant model of how infan...
International audienceAutomatic recognition systems for child speech are lagging behind those dedica...
2014-10-31Developing a robust ASR system for children is a challenging task because of increased var...
Speech recognition has seen dramatic improvements in the last decade, though those improvements have...
This thesis aims to achieve better automatic speech recognition (ASR) for children. The most challen...
n this paper, we propose spectral modification by sharpening formants and by reducing the spectral t...
Recently, adult automatic speech recognition (ASR) system performance has improved dramatically. In ...
Differences in acoustic characteristics between children’s and adults’ speech degrade performance of ...
International audienceCurrent performance of automatic speech recognition (ASR) for children is belo...
Current performance of speech recognition for children is below that of the state-of-the-art for adu...
This paper presents analyses, and recognition experiments, on spontaneous American English speech co...
In this work, speaker characteristic modeling has been applied in the fields of automatic speech rec...
Children speech recognition is indispensable but challenging due to the diversity of children's spee...
Until the last couple of decades, research on speech acquisition generally assumed that infants were...
This paper presents several acoustic analyses carried out on read speech collected from Italian chil...
In the last two decades, statistical clustering models have emerged as a dominant model of how infan...
International audienceAutomatic recognition systems for child speech are lagging behind those dedica...
2014-10-31Developing a robust ASR system for children is a challenging task because of increased var...
Speech recognition has seen dramatic improvements in the last decade, though those improvements have...
This thesis aims to achieve better automatic speech recognition (ASR) for children. The most challen...
n this paper, we propose spectral modification by sharpening formants and by reducing the spectral t...
Recently, adult automatic speech recognition (ASR) system performance has improved dramatically. In ...
Differences in acoustic characteristics between children’s and adults’ speech degrade performance of ...
International audienceCurrent performance of automatic speech recognition (ASR) for children is belo...
Current performance of speech recognition for children is below that of the state-of-the-art for adu...
This paper presents analyses, and recognition experiments, on spontaneous American English speech co...
In this work, speaker characteristic modeling has been applied in the fields of automatic speech rec...
Children speech recognition is indispensable but challenging due to the diversity of children's spee...
Until the last couple of decades, research on speech acquisition generally assumed that infants were...
This paper presents several acoustic analyses carried out on read speech collected from Italian chil...
In the last two decades, statistical clustering models have emerged as a dominant model of how infan...