ECE 8443 – Pattern Recognition EE 8524 – Speech Signal Processing Objectives: Word Graph Generation Lattices Hybrid Systems Resources: ISIP: Search ISIP:

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

ECE 8443 – Pattern Recognition EE 8524 – Speech Signal Processing Objectives: Word Graph Generation Lattices Hybrid Systems Resources: ISIP: Search ISIP: Search LECTURE 33: HYBRID ARCHITECTURES URL:

EE 8524: Lecture 33, Slide 1 Integrating Domain Knowledge

EE 8524: Lecture 33, Slide 2 Loose Coupling of Systems

EE 8524: Lecture 33, Slide 3 Classification of Systems

EE 8524: Lecture 33, Slide 4 Time-Synchronous Stack Decoding

EE 8524: Lecture 33, Slide 5 N-Best Lists

EE 8524: Lecture 33, Slide 6 Lattice Generation

EE 8524: Lecture 33, Slide 7 Word Graph Generation and Compaction

EE 8524: Lecture 33, Slide 8 Rescoring Using Word Graphs