© Springer International Publishing AG 2017. The IARPA Babel program ran from March 2012 to November 2016. The aim of the program was to develop agile and robust speech technology that can be rapidly applied to any human language in order to provide effective search capability on large quantities of real world data. This paper will describe some of the developments in speech recognition and keyword-spotting during the lifetime of the project. Two technical areas will be briefly discussed with a focus on techniques developed at Cambridge University: the application of deep learning for low-resource speech recognition; and efficient approaches for keyword spotting. Finally a brief analysis of the Babel speech language characteristics and lang...
This paper investigates the application of hierarchical MRASTA bottleneck (BN) features for under-re...
Recurrent neural network language models (RNNLMs) have becoming increasingly popular in many applica...
State of the art technologies for speech recognition are very accurate for heavily studied languages...
The IARPA Babel program ran from March 2012 to November 2016. The aim of the program was to develop ...
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...
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...
This paper examines the impact of multilingual (ML) acoustic representations on Automatic Speech Rec...
We describe the use of text data scraped from the web to augment language models for Automatic Speec...
For low resource languages, collecting sufficient training data to build acoustic and language model...
This paper presents recent progress in developing speech-to-text (STT) and keyword spotting (KWS) sy...
International audienceThis paper reports on investigations using two techniques for language model t...
Recently there has been interest in the approaches for training speech recognition systems for langu...
International audienceEnormous progress in speech technologies has been achieved over the last twode...
This paper investigates the application of hierarchical MRASTA bottleneck (BN) features for under-re...
Recurrent neural network language models (RNNLMs) have becoming increasingly popular in many applica...
State of the art technologies for speech recognition are very accurate for heavily studied languages...
The IARPA Babel program ran from March 2012 to November 2016. The aim of the program was to develop ...
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...
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...
This paper examines the impact of multilingual (ML) acoustic representations on Automatic Speech Rec...
We describe the use of text data scraped from the web to augment language models for Automatic Speec...
For low resource languages, collecting sufficient training data to build acoustic and language model...
This paper presents recent progress in developing speech-to-text (STT) and keyword spotting (KWS) sy...
International audienceThis paper reports on investigations using two techniques for language model t...
Recently there has been interest in the approaches for training speech recognition systems for langu...
International audienceEnormous progress in speech technologies has been achieved over the last twode...
This paper investigates the application of hierarchical MRASTA bottleneck (BN) features for under-re...
Recurrent neural network language models (RNNLMs) have becoming increasingly popular in many applica...
State of the art technologies for speech recognition are very accurate for heavily studied languages...