In recent years there has been significant interest in Automatic Speech Recognition (ASR) and KeyWord Spotting (KWS) systems for low resource languages. One of the driving forces for this research direction is the IARPA Babel project. This paper examines the performance gains that can be obtained by combining two forms of deep neural network ASR systems, Tandem and Hybrid, for both ASR and KWS using data released under the Babel project. Baseline systems are described for the five option period 1 languages: Assamese; Bengali; Haitian Creole; Lao; and Zulu. All the ASR systems share common attributes, for example deep neural network configurations, and decision trees based on rich phonetic questions and state-position root nodes. The baselin...
This paper investigates the application of hierarchical MRASTA bottleneck (BN) features for under-re...
The application of deep neural networks to the task of acoustic modeling for automatic speech recogn...
Recurrent neural network language models (RNNLMs) have becoming increasingly popular in many applica...
Copyright © 2014 ISCA. In recent years there has been significant interest in Automatic Speech Recog...
In recent years there has been significant interest in Automatic Speech Recognition (ASR) and Key Wo...
Recently there has been increased interest in Automatic Speech Recognition (ASR) and Key Word Spotti...
Recently there has been increased interest in Automatic Speech Recognition (ASR) and Key Word Spotti...
The IARPA Babel program ran from March 2012 to November 2016. The aim of the program was to develop ...
This paper presents recent progress in developing speech-to-text (STT) and keyword spotting (KWS) sy...
Keyword spotting (KWS) for low-resource languages has drawn increasing attention in recent years. Th...
This paper examines the impact of multilingual (ML) acoustic representations on Automatic Speech Rec...
The development of high-performance speech processing systems for low-resource languages is a challe...
Recently there has been interest in the approaches for train-ing speech recognition systems for lang...
International audienceThis paper reports on investigations using two techniques for language model t...
Copyright © 2014 ISCA. Developing high-performance speech processing systems for low-resource langua...
This paper investigates the application of hierarchical MRASTA bottleneck (BN) features for under-re...
The application of deep neural networks to the task of acoustic modeling for automatic speech recogn...
Recurrent neural network language models (RNNLMs) have becoming increasingly popular in many applica...
Copyright © 2014 ISCA. In recent years there has been significant interest in Automatic Speech Recog...
In recent years there has been significant interest in Automatic Speech Recognition (ASR) and Key Wo...
Recently there has been increased interest in Automatic Speech Recognition (ASR) and Key Word Spotti...
Recently there has been increased interest in Automatic Speech Recognition (ASR) and Key Word Spotti...
The IARPA Babel program ran from March 2012 to November 2016. The aim of the program was to develop ...
This paper presents recent progress in developing speech-to-text (STT) and keyword spotting (KWS) sy...
Keyword spotting (KWS) for low-resource languages has drawn increasing attention in recent years. Th...
This paper examines the impact of multilingual (ML) acoustic representations on Automatic Speech Rec...
The development of high-performance speech processing systems for low-resource languages is a challe...
Recently there has been interest in the approaches for train-ing speech recognition systems for lang...
International audienceThis paper reports on investigations using two techniques for language model t...
Copyright © 2014 ISCA. Developing high-performance speech processing systems for low-resource langua...
This paper investigates the application of hierarchical MRASTA bottleneck (BN) features for under-re...
The application of deep neural networks to the task of acoustic modeling for automatic speech recogn...
Recurrent neural network language models (RNNLMs) have becoming increasingly popular in many applica...