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Tight Coupling between ASR and MT in Speech-to-Speech Translation

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Motivation of Tight Coupling between ASR and MT. One best of ASR could be wrong ... 2, How tight should be the coupling? Topics Covered Today. The concept of Coupling ... – PowerPoint PPT presentation

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Title: Tight Coupling between ASR and MT in Speech-to-Speech Translation


1
Tight Coupling between ASR and MT in
Speech-to-Speech Translation
  • Arthur Chan
  • Prepared for
  • Advanced Machine Translation Seminar

2
This Seminar
  • Introduction (4 slides)

3
A Conceptual Model of Speech-to-Speech Translation
Speech Recognizer
Machine Translator
Speech Synthesizer
Decoding Result(s)
Translation
waveforms
waveforms
4
Motivation of Tight Coupling between ASR and MT
  • One best of ASR could be wrong
  • MT could be benefited from wide range of
    supplementary information provided by ASR
  • N-best list
  • Lattice
  • Sentenced/Word-based Confidence Scores
  • E.g. Word posterior probability
  • Confusion network
  • Or consensus decoding (Mangu 1999)
  • Some observed that
  • MT quality depends on WER.

5
Scope of this talk
Speech Recognizer
Machine Translator
Speech Synthesizer
1-best?
Translation
N-best?
waveforms
waveforms
Lattice?
Confusion network?
1, Should we combine the two? 2, How tight should
be the coupling?
6
Topics Covered Today
  • The concept of Coupling
  • The tightness of coupling between ASR and X
  • (Ringger 95)
  • Interfaces between ASR and MT in loose coupling
  • What could ASR provide?
  • What could MT use?
  • Very tight coupling
  • Neys formulae
  • ATT Approach
  • Combination of features of ASR and MT
  • Direct Modeling

7
The Concept of Coupling
8
Classification of Coupling of ASR and Natural
Language Understanding (NLU)
  • Proposed in Ringger 95, Harper 94
  • 3 Dimensions of ASR/NLU
  • Complexity of the search algorithm
  • Simple N-gram?
  • Incrementality of the coupling
  • On-line? Left-to-right?
  • Tightness of the coupling
  • Tight? Loose? Semi-tight?

9
Tightness of Coupling
Tight
Semi-Tight
Loose
10
Summary of Coupling between ASR and NLU
11
Implication on ASR/MT coupling
  • Generalize many systems
  • Loose coupling
  • Any system which uses 1-best, n-best, lattice for
    1-way module communication
  • Tight coupling
  • ATT FST-based system
  • Semi-tight coupling
  • Filled in a quote here

12
Interfaces in Loose Coupling
13
Perspectives
  • What output could an ASR generates?
  • Not all of them are used but it could mean
    opportunity in future.
  • What algorithms could MT uses given a certain
    inputs?
  • On-line algorithm is a focus

14
Decoding of HMM-based ASR
  • Decoding of HMM-based ASR
  • Searching the best path in a huge HMM-state
    lattice.
  • 1-best ASR result
  • The best path one could find from backtracking.
  • State Lattice (Next page)

15
(No Transcript)
16
Things one could extract from the state lattice
  • From the backtracking information
  • N-best list
  • The N best decoding results from the state
    lattice
  • Lattice
  • A lattice of the decoding but in the word level
  • From the lattice
  • N-best list
  • Confusion network.
  • Or consensus decoding (Mangu 99)

17
Other things one could extract from the decoder
  • Begin time and end time
  • Useful in time-sensitive application
  • E.g. multi-modal applications
  • Sentence/Word-based Confidence Scores
  • Found to be pretty useful in many other occasions

18
Experimental Results
19
How MT used the output?
  • What decoding algorithms are using?

20
Tight Coupling
21
Literature
  • Eric K. Ringger, A Robust Loose Coupling for
    Speech Recognition and Natural Language
    Understanding, Technical Report 592, Computer
    Science Department, Rochester University, 1995
  • The ATT paper
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