This paper describes a system, based on statistical machine translation, that tries to remove from the output of an automatic audio transcription system non relevant words, such as: erroneously inserted functional words, filled pauses, interjections, word fragments, etc, as well as to repair, at a certain extent, ungrammatical pieces of sentences. For this work we decided to concentrate on a political speeches application domain, due to the immediate availability of a parallel corpus of automatic audio transcriptions and related proceedings, manually produced. The system can effectively detect and correct several errors (mainly insertions) included in the alignment b...
We describe an efficient procedure for automatic repair of quickly transcribed (QT) speech. QT speec...
In this paper, we study the incorporation of statistical machine translation models to automatic spe...
In the spoken language translation pipeline, machine translation systems that are trained solely on ...
This paper describes a system, based on statistical machine translation, that tries to...
International audienceLarge vocabulary automatic speech recognition (ASR) technologies perform well ...
Our paper focuses on the gain which can be achieved on human transcription of spontaneous and prepar...
<p>We propose a novel technique for adapting text-based statistical machine translation to deal with...
Error propagation from automatic speech recognition (ASR) to machine translation (MT) is a critical ...
This paper is concerned with the problem of machine aided human language translation. It addresses a...
We report insights from translating Spanish conversational telephone speech into English text by cas...
Automatic speech recognition (ASR) systems currently reach enough performance to be integrated in va...
Automatic speech recognition (ASR) in the educational environment could be a solution to address the...
Speech-to-speech translation is a challenging task mixing two of the most ambitious Natural Language...
Over the last years, many advances have been made in the field of Automatic Speech Recognition (ASR)...
This paper presents an approach for integrating statistical ma-chine translation and automatic speec...
We describe an efficient procedure for automatic repair of quickly transcribed (QT) speech. QT speec...
In this paper, we study the incorporation of statistical machine translation models to automatic spe...
In the spoken language translation pipeline, machine translation systems that are trained solely on ...
This paper describes a system, based on statistical machine translation, that tries to...
International audienceLarge vocabulary automatic speech recognition (ASR) technologies perform well ...
Our paper focuses on the gain which can be achieved on human transcription of spontaneous and prepar...
<p>We propose a novel technique for adapting text-based statistical machine translation to deal with...
Error propagation from automatic speech recognition (ASR) to machine translation (MT) is a critical ...
This paper is concerned with the problem of machine aided human language translation. It addresses a...
We report insights from translating Spanish conversational telephone speech into English text by cas...
Automatic speech recognition (ASR) systems currently reach enough performance to be integrated in va...
Automatic speech recognition (ASR) in the educational environment could be a solution to address the...
Speech-to-speech translation is a challenging task mixing two of the most ambitious Natural Language...
Over the last years, many advances have been made in the field of Automatic Speech Recognition (ASR)...
This paper presents an approach for integrating statistical ma-chine translation and automatic speec...
We describe an efficient procedure for automatic repair of quickly transcribed (QT) speech. QT speec...
In this paper, we study the incorporation of statistical machine translation models to automatic spe...
In the spoken language translation pipeline, machine translation systems that are trained solely on ...