A major problem with dialectal Arabic speech recognition is due to the sparsity of speech resources. In this paper, we propose a trans-fer learning framework to jointly use large amount of Modern Standard Arabic (MSA) data and little amount of dialectal Arabic data to improve acoustic and language modeling. We have chosen the Qatari Arabic (QA) dialect as a typical example for an under-resourced Arabic dialect. A wide-band speech corpus has been collected and transcribed from several Qatari TV series and talk-show programs. A large vocabulary speech recognition baseline system was built using the QA corpus. The proposed MSA-based transfer learning technique was performed by applying orthographic normalization, phone mapping, data pooling, a...
This thesis explores novel approaches to the Arabic-English speech-to-text translation task. First, ...
The need for fully automatic translation at DigitalTolk, a Stockholm-based company providing transla...
Lack of spoken and written training data is one o f the main issues encountered by Arabic automatic ...
Novel Techniques for Dialectal Arabic Speech describes approaches to improve automatic speech recogn...
Amajor problem with dialectal Arabic acoustic modeling is due to the very sparse available speech re...
While building automatic speech recognition (ASR) requires a large amount of speech and text data, t...
Arabic dialect classification has been an important and challenging problem for Arabic language proc...
Although Arabic is currently one of the most widely spoken lan-guages in the world, there has been r...
The Arabic language is a collection of varieties, among which Modern Standard Arabic (MSA) has a spe...
The importance of Automatic Speech Recognition (ASR) Systems, whose job is to generate text from aud...
Arabic dialect identification (ADI) is an important aspect of the Arabic speech processing pipeline,...
Speech dialects refer to linguistic and pronunciation variations in the speech of the same language....
We study the effectiveness of recently developed language recognition techniques based on speech rec...
This paper describes an Arabic dialect identification system which we developed for the Discriminati...
AbstractThis paper addresses the adaptation of Arabic speech recognition (ASR) systems to foreign ac...
This thesis explores novel approaches to the Arabic-English speech-to-text translation task. First, ...
The need for fully automatic translation at DigitalTolk, a Stockholm-based company providing transla...
Lack of spoken and written training data is one o f the main issues encountered by Arabic automatic ...
Novel Techniques for Dialectal Arabic Speech describes approaches to improve automatic speech recogn...
Amajor problem with dialectal Arabic acoustic modeling is due to the very sparse available speech re...
While building automatic speech recognition (ASR) requires a large amount of speech and text data, t...
Arabic dialect classification has been an important and challenging problem for Arabic language proc...
Although Arabic is currently one of the most widely spoken lan-guages in the world, there has been r...
The Arabic language is a collection of varieties, among which Modern Standard Arabic (MSA) has a spe...
The importance of Automatic Speech Recognition (ASR) Systems, whose job is to generate text from aud...
Arabic dialect identification (ADI) is an important aspect of the Arabic speech processing pipeline,...
Speech dialects refer to linguistic and pronunciation variations in the speech of the same language....
We study the effectiveness of recently developed language recognition techniques based on speech rec...
This paper describes an Arabic dialect identification system which we developed for the Discriminati...
AbstractThis paper addresses the adaptation of Arabic speech recognition (ASR) systems to foreign ac...
This thesis explores novel approaches to the Arabic-English speech-to-text translation task. First, ...
The need for fully automatic translation at DigitalTolk, a Stockholm-based company providing transla...
Lack of spoken and written training data is one o f the main issues encountered by Arabic automatic ...