In this paper, we introduce a new approach to dialect recognition which relies on the hypothesis that certain phones are realized differently across dialects. Given a speaker’s utterance, we first obtain the most likely phone sequence using a phone recognizer. We then extract GMM Supervectors for each phone instance. Using these vectors, we design a kernel function that computes the similarities of phones between pairs of utterances. We employ this kernel to train SVM classifiers that estimate posterior probabilities, used during recognition. Testing our approach on four Arabic dialects from 30s cuts, we compare our performance to five approaches: PRLM; GMM-UBM; our own improved version of GMM-UBM which employs fMLLR adaptation; our recent ...
The paper presents work on improved sentence-level dialect classification of Egyptian Arabic (ARZ) v...
We investigate the question of whether phone recognition models trained on large English databases c...
This paper presents a method of augmenting shifted-delta cepstral coefficients (SDCCs) with the clas...
In this paper, we introduce a new approach to dialect recognition which relies on the hypothesis tha...
We describe a new approach to automatic dialect and accent recognition which exceeds state-of-the-ar...
In this paper, we introduce a new approach to dialect recognition that relies on context-dependent (...
In this paper, we introduce a new approach to dialect recognition that relies on context-dependent (...
We study the effectiveness of recently developed language recognition techniques based on speech rec...
This paper presents a simple approach to phonotactic dialect recognition which uses lattices of time...
A fundamental challenge for current research on speech science and technology is understanding and m...
We present a study on sentence-level Arabic Dialect Identification using the newly developed Multidi...
The Arabic language is a collection of multiple variants, among which Modern Standard Arabic (MSA) h...
Speech dialects refer to linguistic and pronunciation variations in the speech of the same language....
This paper describes an Arabic dialect identification system which we developed for the Discriminati...
The Arabic language has many different dialects, they must beidentified before Automatic Speech Reco...
The paper presents work on improved sentence-level dialect classification of Egyptian Arabic (ARZ) v...
We investigate the question of whether phone recognition models trained on large English databases c...
This paper presents a method of augmenting shifted-delta cepstral coefficients (SDCCs) with the clas...
In this paper, we introduce a new approach to dialect recognition which relies on the hypothesis tha...
We describe a new approach to automatic dialect and accent recognition which exceeds state-of-the-ar...
In this paper, we introduce a new approach to dialect recognition that relies on context-dependent (...
In this paper, we introduce a new approach to dialect recognition that relies on context-dependent (...
We study the effectiveness of recently developed language recognition techniques based on speech rec...
This paper presents a simple approach to phonotactic dialect recognition which uses lattices of time...
A fundamental challenge for current research on speech science and technology is understanding and m...
We present a study on sentence-level Arabic Dialect Identification using the newly developed Multidi...
The Arabic language is a collection of multiple variants, among which Modern Standard Arabic (MSA) h...
Speech dialects refer to linguistic and pronunciation variations in the speech of the same language....
This paper describes an Arabic dialect identification system which we developed for the Discriminati...
The Arabic language has many different dialects, they must beidentified before Automatic Speech Reco...
The paper presents work on improved sentence-level dialect classification of Egyptian Arabic (ARZ) v...
We investigate the question of whether phone recognition models trained on large English databases c...
This paper presents a method of augmenting shifted-delta cepstral coefficients (SDCCs) with the clas...