Most of the state–of–the–art speaker recognition systems use i– vectors, a compact representation of spoken utterances. Since the “standard” i–vector extraction procedure requires large memory structures, we recently presented the Factorized Sub-space Estimation (FSE) approach, an efficient technique that dramatically reduces the memory needs for i–vector extraction, and is also fast and accurate compared to other proposed approaches. FSE is based on the approximation of the matrix T, representing the speaker variability sub–space, by means of the product of appropriately designed matrices. In this work, we introduce and evaluate a further approximation of the matrices that most contribute to the memory costs in the FSE approach, showing th...
This paper proposes a density model transformation for speaker recognition systems based on i–vector...
The i-vector extraction process is affected by several factors such as the noise level, the acoustic...
Most speaker recognition systems use i-vectors which are compact representations of speaker voice ch...
Most of the state-of-the-art speaker recognition systems use i- vectors, a compact representation of...
Most of the state–of–the–art speaker recognition systems use a compact representation of spoken utte...
Most of the state–of–the–art speaker recognition systems use a compact representation of spoken utte...
This paper focuses on the extraction of i-vectors, a compact representation of spoken utterances th...
This work aims at reducing the memory demand of the data structures that are usually pre–computed a...
This paper focuses on the extraction of i-vectors, a compact representation of spoken utterances tha...
Systems based on i–vectors represent the current state–of–the–art in text-independent speaker recogn...
Systems based on i–vectors represent the current state–of–the–art in text–independent speaker recogn...
I-vectors are currently widely used by state-of-the-art speech processing systems for tasks such as ...
Linear models in i-vector space have shown to be an effective solution not only for speaker identifi...
Systems based on i-vectors represent the current state-of-the-art in text-independent speaker recogn...
Linear models in i-vector space have shown to be an effective solution not only for speaker identifi...
This paper proposes a density model transformation for speaker recognition systems based on i–vector...
The i-vector extraction process is affected by several factors such as the noise level, the acoustic...
Most speaker recognition systems use i-vectors which are compact representations of speaker voice ch...
Most of the state-of-the-art speaker recognition systems use i- vectors, a compact representation of...
Most of the state–of–the–art speaker recognition systems use a compact representation of spoken utte...
Most of the state–of–the–art speaker recognition systems use a compact representation of spoken utte...
This paper focuses on the extraction of i-vectors, a compact representation of spoken utterances th...
This work aims at reducing the memory demand of the data structures that are usually pre–computed a...
This paper focuses on the extraction of i-vectors, a compact representation of spoken utterances tha...
Systems based on i–vectors represent the current state–of–the–art in text-independent speaker recogn...
Systems based on i–vectors represent the current state–of–the–art in text–independent speaker recogn...
I-vectors are currently widely used by state-of-the-art speech processing systems for tasks such as ...
Linear models in i-vector space have shown to be an effective solution not only for speaker identifi...
Systems based on i-vectors represent the current state-of-the-art in text-independent speaker recogn...
Linear models in i-vector space have shown to be an effective solution not only for speaker identifi...
This paper proposes a density model transformation for speaker recognition systems based on i–vector...
The i-vector extraction process is affected by several factors such as the noise level, the acoustic...
Most speaker recognition systems use i-vectors which are compact representations of speaker voice ch...