information extraction from spoken language

25
Information Extraction from Spoken Language Dr Pierre Dumouchel Scientific Vice- President, CRIM Full Professor, ÉTS

Upload: neci

Post on 23-Feb-2016

49 views

Category:

Documents


0 download

DESCRIPTION

Information Extraction from Spoken Language. Dr Pierre Dumouchel Scientific Vice-President, CRIM Full Professor, ÉTS. PUT RAW DATA NOW and then LINK DATA. http://www.ted.com/talks/tim_berners_lee_on_the_next_web.html. PUT RAW DATA NOW. Text Data (numbers, statistics) - PowerPoint PPT Presentation

TRANSCRIPT

Page 1: Information Extraction from Spoken Language

Information Extraction from Spoken Language

Dr Pierre DumouchelScientific Vice-President, CRIM

Full Professor, ÉTS

Page 2: Information Extraction from Spoken Language

PUT RAW DATA NOW and then LINK DATA

• http://www.ted.com/talks/tim_berners_lee_on_the_next_web.html

Page 3: Information Extraction from Spoken Language

PUT RAW DATA NOW

• Text• Data (numbers, statistics)• Data (audio, video)

Page 4: Information Extraction from Spoken Language

LINKED DATA

• Information is in the relationship between data• Find relationship between them

Page 5: Information Extraction from Spoken Language

IBM’s Watson and Jeopardy

Page 6: Information Extraction from Spoken Language

Proposal

• Information Extraction in radio and television documents– Industrial Partners:

• CEDROM Sni• Irosoft

– Universities and Research Center• CRIM• ÉTS• INRS-EMT• McGill

• NSERC Strategic Project Proposal

Page 7: Information Extraction from Spoken Language

Process Raw Audio Data

• Automatic Speech Recognition (ASR)• Parsing • Indexation

ASR Parsing Indexation

Page 8: Information Extraction from Spoken Language

Closed-captioning / Subtitling

VOICEWRITER

Page 9: Information Extraction from Spoken Language

Closed- captioning / Subtitling

• Done with the help of a VoiceWriter that:– Respeaks– Adds punctuation– Selects proper dictionary– Does not speak during advertising– Wraps up information when more than one

speakers speak in the same time or when the speech rate is too fast.

– Translates

Page 10: Information Extraction from Spoken Language

How to process raw audio data?

ASR Parsing Indexation

AudioDiarization

Speaker Diarization

Speaker Recognition

Speaker RolePunctuationStructural

SegmentationTopic

Recognition

Page 11: Information Extraction from Spoken Language

Audio Diarization

• Aims to segment an audio recording into acoustically homogeneous parts– Distinguish between speech and music– Distinguish between advertising and news

Page 12: Information Extraction from Spoken Language

Speaker diarization

• Aims to segment a speech signal into its speech turns

Page 13: Information Extraction from Spoken Language

Speaker Recognition

Page 14: Information Extraction from Spoken Language

Speaker Role

• In broadcast news speech, most speech is from anchors and reporters. The remaining is from excerpts from quotations or interviews and are referred as sound bites.

• Detecting speaker role is important to improve: – acoustice speech recognizer– information extraction

Page 15: Information Extraction from Spoken Language

Punctuation• Some language analysis tasks such as parsing

and entity extraction needs punctuations (dots and commas) in order to work properly.

Page 16: Information Extraction from Spoken Language

Structural Segmentation

• Sentence segmentation, paragraph segmentation, story segmentation are important features for speech understanding applications from parsing and information extraction at the basic level.

• This problem is absent in text processing but has to be solved in speech processing.

Page 17: Information Extraction from Spoken Language

Topic Spotting• Aims to identify the topic of a speech signal. It is useful to

adapt the different components of the system as well as to add metatag on a speech signal.

• Example: La belle ferme le voile– La: the, her– Belle: beautiful, beauty– Ferme: farm, closes– Le: the, his– Voile: veil, blocks the view– Two hypothetic translations:

• The veil is closed by the beauty• The beautiful farm blocks his view

Page 18: Information Extraction from Spoken Language

How to improve Information Extraction from speech?

By improving ASR Components

Page 19: Information Extraction from Spoken Language

Automatic Speech Recognizer

• Performance drops when• Out-of-vocabulary (Lexical models)• Multiple users (Acoustic models)• Multiple microphones (Acoustic models)• Multiple topics (Language models)• Cross-over talks (All models)

Page 20: Information Extraction from Spoken Language

How to improve Information Extraction from speech?

• More data are better data.• More similar data are better data. Similar in

terms of– Topic – Coming from the same time period. Specifically,

more recent.• Example: Japan

– Prediction of what will happen and who will speaks.

Page 21: Information Extraction from Spoken Language

More data are better data

• Use of the huge amount of web information• Use super computer infrastructure in order to

model it in a reasonable time:– Compute Canada infrastructure: CLUMEQ– Cluster of university computers

Page 22: Information Extraction from Spoken Language

More similar data are better data

• Exploiting redundancies in different media information:– Anchor speech is predominant.– Reporters often appear at specific times, day after

day– Advertisings appear (and repeat) near specific

time slot, day after day.– The same news is often reused from one media to

another.

Page 23: Information Extraction from Spoken Language

Exploiting redundancies in different media information

Page 24: Information Extraction from Spoken Language

Exploiting redundancies in different media information

Page 25: Information Extraction from Spoken Language

And then ….

ASR Parsing Indexation

AudioDiarization

Speaker Diarization

Speaker Recognition

Speaker RolePunctuationStructural

SegmentationTopic

Recognition