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Centro per la Ricerca Scientifica e Tecnologica

Centro per la Ricerca Scientifica e Tecnologica. Spoken language technologies: recent advances and future challenges Gianni Lazzari VIENNA July 26. SUMMARY Short introduction on SLT Where are we today ? TC-STAR and RAI projects Outlook for the future.

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Centro per la Ricerca Scientifica e Tecnologica

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  1. Centro per la Ricerca Scientifica e Tecnologica Spoken language technologies: recent advances and future challenges Gianni Lazzari VIENNA July 26

  2. SUMMARY • Short introduction on SLT • Where are we today ? • TC-STAR and RAI projects • Outlook for the future Centro per la Ricerca Scientifica e Tecnologica Focus on the use of Spoken Language Technologies for multilingual transcription and reporting tasks

  3. Typical tasks in Human Language Technologies (HLT) • speech recognition (voice commands & speech transcription) • character recognition • object and gesture recognition • (spoken and written) language understanding • spoken dialog systems • speech synthesis • text summarization • document classification and information retrieval • syntactic analysis of natural language • speech and text translation • • ... Spoken Language Technologies: recent advances and future challenges

  4. General Spoken Language System Architecture MODELS acoustic language semantic dialog synthesis Recognition input Understanding and dialog answer Generation and Synthesis Spoken Language Technologies: recent advances and future challenges

  5. Speech Transcription System Architecture MODELS Acoustic Language Speakers Speech Music Noise Recognition Input Audio: -Noise -Speech -Music -….. results: Enriched Text Spoken Language Technologies: recent advances and future challenges

  6. Typical Transcription System Spoken Language Technologies: recent advances and future challenges

  7. Standard Automatic Speech Recognition Architecture Spoken Language Technologies: recent advances and future challenges

  8. Word error rate of different speech recognition tasks • Dictation: 7%, well formed, computer, FBW • Broadcast news: 12%, various, audience, FBW • Switchboard : 20-30% spontaneous, person, TBW • Voicemail: 30% spontaneous, person, TWB • Meetings: 50-60% spontaneous, person FF • The features characterizing these tasks are: • type of speech: well formed vs spontaneous • target of communication: computer, audience, person • bandwidth: • FWB, full bandwidth • TWB, telephone bandwidth • FF, far field. Spoken Language Technologies: recent advances and future challenges

  9. RAI Italian Broadcast news Transcription Spoken Language Technologies: recent advances and future challenges

  10. Evaluation of the Italian broadcast news transcription task. • Acoustic models are trained through a speaker adaptive acoustic modelling procedures • Two sets of acoustic models were trained, for wideband and narrowband speech: exploiting for each set about 140 hours of speech. • The LM was estimated on a 226M-word corpus including newspaper articles, for the largest part, and BN transcripts. • The LM is compiled into a static network with a shared-tail topology.. Spoken Language Technologies: recent advances and future challenges

  11. Word error rate on the Italian broadcast news transcription task. Spoken Language Technologies: recent advances and future challenges

  12. Speech recognition Transformation Source language text Lexicon model Global Search Alignment model Vorrei prenotare un albergo a Francoforte Language model Transformation Speech synthesis target language text I want to reserve a hotel room in Frankfurt STATISTICAL TRANSLATION BASED ON BAYESIAN DECISION RULE Spoken Language Technologies: recent advances and future challenges

  13. Statistical Translation System Spoken Language Technologies: recent advances and future challenges

  14. Experimental findings in HLT research (1973-2004) • statistical methods most successful: • in particular: speech recognition, language translation, parsing, dialog systems, ... • scientific foundations: • methods of computer science, statistical modelling, information theory • handling huge amounts of data • 200 hours of speech recordings, 100 Mio of running words, ... • learning from data: • fully automatic procedures • more data than can be processed by human experts • efficient algorithms: • search/decision algorithms for heuristic search • • ... Spoken Language Technologies: recent advances and future challenges

  15. Research on HLT: 1973-2004 • speech recognition (1973-2004) • most of the progress: by pure statistical modelling • some progress: by weak acoustic-phonetic-linguistic knowledge,i.e. domain specific knowledge • virtually no progress: by classical rule-based and AI methods • similar recent experience (1993-2004) • machine translation, information extraction, dialog systems, ... • expectation for future progress in HLT • most important: methodology: computer science, statistical modelling, information theory • domain-specific knowledge: acoustics, phonetics, linguistics, ... Spoken Language Technologies: recent advances and future challenges

  16. Spoken language translation: joint projects (national, European, international: ATR, C-Star, Verbmobil, Eutrans, Nespole!, Fame, LC-Star, PF-Star, TC-STAR: • restricted domains: • appointment scheduling, conference registration, travelling, tourism information, ... • • vocabulary size: 3 000 – 10 000 words • best performing systems and approaches: data-driven • example-based methods • finite-state transducers • statistical approaches e.g.: Verbmobil evaluation [June 2000]: better by a factor of 2 • written language translation: US Tides project 2001-2004 • unrestricted domain: press news, vocab.size »= 50 000 words • language pairs: Chinese!English, Arabic!English • performance [July 2003]: • best statistical systems are better than conventional/commercial systems Spoken Language Technologies: recent advances and future challenges

  17. VI FRAMEWORK PROGRAM PRIORITY MultimodalInterfaces IST-2002-2.3.1.6 TC-STARTechnology and Corpora for Speech to Speech Translation Contract Nr. FP6 506738

  18. PARTNERS Spoken Language Technologies: recent advances and future challenges

  19. TC-STAR TC-STAR Project focuses on advanced research in key technologies for speech to speech translation: • speech recognition (ASR) • spoken language translation (SLT) • speech synthesis (TTS) • Start: April 2004 • End: March 2007 • Grant: 11 M. Euro • METHODOLOGY: • COMPETITIVE EVALUATION • COOPERATION Spoken Language Technologies: recent advances and future challenges

  20. Vision Transcription and Translation of broadcast news, speeches, lectures and interviews Hi, What do you think about Simultaneous Translation Vocal access Web access Spoken Language Technologies: recent advances and future challenges

  21. Application Scenario • A selection of unconstrained conversational speech domains: - Broadcast news - European Parliament Plenary Session • A few languages important for Europe society and economy: • European Accented English • European Spanish • Chinese Spoken Language Technologies: recent advances and future challenges

  22. 2005 FIRST EVALUATION RESULTS ONTHE EUROPEAN PARLIAMENT PLENARY SESSION TASK The Evaluation Tasks and Databases translation tasks: – English to Spanish: EPPS: European Parliament Plenary Sessions – Spanish to English: EPPS: European Parliament Plenary Session Three types of input to SLT: – output of automatic speech recognition – verbatim manual transcriptions – final text editions (with punctuation marks) Spoken Language Technologies: recent advances and future challenges

  23. 2005 FIRST EVALUATION RESULTS ONTHE EUROPEAN PARLIAMENT PLENARY SESSION TASK Training data • Sentence-aligned speeches and their translations • Final text editions: from April 1996 to Oct. 4th, 2004 • Verbatim transcriptions: from May 2004 to Oct. 4th, 2004 Development data Oct. 26, 2004 Evaluation data Nov. 14, 2004 Spoken Language Technologies: recent advances and future challenges

  24. 2005 FIRST EVALUATION RESULTS ONTHE EUROPEAN PARLIAMENT PLENARY SESSION TASK Spoken Language Technologies: recent advances and future challenges

  25. 2005 FIRST EVALUATION RESULTS ONTHE EUROPEAN PARLIAMENT PLENARY SESSION TASK ASR EPPS DATA word error rate - wer • EUROEPAN ACCENTED ENGLISH: 9,5 % best TC-STAR • EUROPEAN SPANISH : 10,1 % best TC-STAR SLT EPPS DATA position independent - wer • ENGLISH TO SPANISH 49% best PARTNER result • SPANISH TO ENGLISH 46% best PARTNER result Spoken Language Technologies: recent advances and future challenges

  26. “ The spoken translation problem …….is still a significant challenge: Good text translation was hard enough to pull off. Speech to speech MT was beyond going to the Moon – it was Mars…” [Steve Silbermann, Wired Magazine]. Spoken Language Technologies: recent advances and future challenges

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