This paper introduces a speech corpus which is developed for Myanmar Automatic Speech Recognition (ASR) research. Automatic Speech Recognition (ASR) research has been conducted by the researchers around the world to improve their language technologies. Speech corpora are important in developing the ASR and the creation of the corpora is necessary especially for low-resourced languages. Myanmar language can be regarded as a low resourced language because of lack of pre-created resources for speech processing research. In this work, a speech corpus named UCSY-SC1 (University of Computer Studies Yangon - Speech Corpus1) is created for Myanmar ASR research. The corpus consists of two types of domain: news and daily conversations. The total size...
Maximum digital information is available to fewer people who can read or understand a particular lan...
Automatic speech processing technologies hold great potential to facilitate the urgent task of docum...
We proposed an approach to build a robust automatic speech recognizer using deep convolutional neura...
Researchers of many nations have developed automatic speech recognition (ASR) to show their national...
Myanmar language is a tonal and analyticlanguage. It can be considered as an under-resourcedlanguage...
Automatic Speech Recognition (ASR) is a popularand challenging area of research in human computerint...
Speech is an easiest way to communicate with each other. Digital processing of speechsignals is very...
Nowadays, Automatic speech recognition (ASR) technology comes as the popular innovation in human mac...
This paper presents a spontaneous speechrecognition system for Myanmar language. Automaticspeech rec...
In Natural Language Processing (NLP), Word segmentation and Part-of-Speech (POS) taggingare fundamen...
This proposed system is syllable-based Myanmar speech recognition system. There are three stages: Fe...
Automatic Speech Recognition (ASR)system is to accurately and efficiently convertspeech signal into ...
Myanmar language is a low-resource language and this is one of the main reasons why Myanmar Natural ...
This thesis focuses on enhancing Myanmar Text-to-Speech (TTS) system togenerate more natural synthet...
Abstract: The baseline system of an automatic speech recognition normally uses Mel-Frequency Cepstra...
Maximum digital information is available to fewer people who can read or understand a particular lan...
Automatic speech processing technologies hold great potential to facilitate the urgent task of docum...
We proposed an approach to build a robust automatic speech recognizer using deep convolutional neura...
Researchers of many nations have developed automatic speech recognition (ASR) to show their national...
Myanmar language is a tonal and analyticlanguage. It can be considered as an under-resourcedlanguage...
Automatic Speech Recognition (ASR) is a popularand challenging area of research in human computerint...
Speech is an easiest way to communicate with each other. Digital processing of speechsignals is very...
Nowadays, Automatic speech recognition (ASR) technology comes as the popular innovation in human mac...
This paper presents a spontaneous speechrecognition system for Myanmar language. Automaticspeech rec...
In Natural Language Processing (NLP), Word segmentation and Part-of-Speech (POS) taggingare fundamen...
This proposed system is syllable-based Myanmar speech recognition system. There are three stages: Fe...
Automatic Speech Recognition (ASR)system is to accurately and efficiently convertspeech signal into ...
Myanmar language is a low-resource language and this is one of the main reasons why Myanmar Natural ...
This thesis focuses on enhancing Myanmar Text-to-Speech (TTS) system togenerate more natural synthet...
Abstract: The baseline system of an automatic speech recognition normally uses Mel-Frequency Cepstra...
Maximum digital information is available to fewer people who can read or understand a particular lan...
Automatic speech processing technologies hold great potential to facilitate the urgent task of docum...
We proposed an approach to build a robust automatic speech recognizer using deep convolutional neura...