AbstractThis paper addresses the adaptation of Arabic speech recognition (ASR) systems to foreign accented speakers. This adaptation is accomplished by using the adaptation techniques; namely, the Maximum Likelihood Linear Regression (MLLR), the Maximum a posteriori (MAP), and the combination of MLLR and MAP. The LDC-WestPoint Modern Standard Arabic (MSA) corpus and HTK toolkit were used in implementing all experiments. The systems were evaluated using both word and phoneme levels. Results show that unique MSA Arabic Phonemes such as pharyngeal and emphatic consonants, which are difficult to pronounce for non-native speakers, benefit from the adaptation process using MLLR and MAP combination. An overall improvement of 7.37% has been obtaine...
International audienceAutomatic speech recognition for Arabic is a very challenging task. Despite al...
In this research, we propose a hybrid approach for acoustic and pronunciation modeling for Arabic sp...
Modeling individual’s variation in speech pattern can be challenging in Automatic Speech Reco...
AbstractThis paper investigates the four emphatic consonants of Arabic from the point of view of aut...
Novel Techniques for Dialectal Arabic Speech describes approaches to improve automatic speech recogn...
This paper investigates the four emphatic consonants of Arabic from the point of view of automatic ...
Pronunciation variability is by far the most critical issue for Arabic automatic speech recognition ...
In this paper, we analyze the impact of five Arabic dialects on the front-end and pronunciation dict...
The automatic recognition of foreign-accented Arabic speech is a challenging task since it involves...
The Arabic language is a collection of varieties, among which Modern Standard Arabic (MSA) has a spe...
Amajor problem with dialectal Arabic acoustic modeling is due to the very sparse available speech re...
In this paper two aspects of generating and using phonetic Arabic dictionaries are described. First,...
This paper investigates the unique pharyngeal and uvular consonants of Arabic from the automatic spe...
In recent years, the use of morphological decomposition strategies for Arabic Automatic Speech Recog...
We present in this chapter a practical approach in building Arabic automatic speech recognition (ASR...
International audienceAutomatic speech recognition for Arabic is a very challenging task. Despite al...
In this research, we propose a hybrid approach for acoustic and pronunciation modeling for Arabic sp...
Modeling individual’s variation in speech pattern can be challenging in Automatic Speech Reco...
AbstractThis paper investigates the four emphatic consonants of Arabic from the point of view of aut...
Novel Techniques for Dialectal Arabic Speech describes approaches to improve automatic speech recogn...
This paper investigates the four emphatic consonants of Arabic from the point of view of automatic ...
Pronunciation variability is by far the most critical issue for Arabic automatic speech recognition ...
In this paper, we analyze the impact of five Arabic dialects on the front-end and pronunciation dict...
The automatic recognition of foreign-accented Arabic speech is a challenging task since it involves...
The Arabic language is a collection of varieties, among which Modern Standard Arabic (MSA) has a spe...
Amajor problem with dialectal Arabic acoustic modeling is due to the very sparse available speech re...
In this paper two aspects of generating and using phonetic Arabic dictionaries are described. First,...
This paper investigates the unique pharyngeal and uvular consonants of Arabic from the automatic spe...
In recent years, the use of morphological decomposition strategies for Arabic Automatic Speech Recog...
We present in this chapter a practical approach in building Arabic automatic speech recognition (ASR...
International audienceAutomatic speech recognition for Arabic is a very challenging task. Despite al...
In this research, we propose a hybrid approach for acoustic and pronunciation modeling for Arabic sp...
Modeling individual’s variation in speech pattern can be challenging in Automatic Speech Reco...