• Skip to primary navigation
  • Skip to main content
SRI InternationalSRI mobile logo

SRI International

SRI International - American Nonprofit Research Institute

  • About
    • Blog
    • Press room
  • Expertise
    • Advanced imaging systems
    • Artificial intelligence
    • Biomedical R&D services
    • Biomedical sciences
    • Computer vision
    • Cyber & formal methods
    • Education and learning
    • Innovation strategy and policy
    • National security
    • Ocean & space
    • Quantum
    • QED-C
    • Robotics, sensors & devices
    • Speech & natural language
    • Video test & measurement
  • Ventures
  • NSIC
  • Careers
  • Contact
  • 日本支社
Show Search
Hide Search
Speech & natural language publications December 1, 2017 Conference Proceeding

Language Diarization for Semi-supervised Bilingual Acoustic Model Training

Mitchell McLaren December 1, 2017

SRI Authors: Mitchell McLaren

Citation

Copy to clipboard


E. Yılmaz, M. McLaren, H. van den Heuvel and D. A. van Leeuwen, “Language Diarization for Semi-supervised Bilingual Acoustic Model Training,” in Proc. ASRU 2017, pp. 91-96, December 2017.

Abstract

In this paper, we investigate several automatic transcription schemes for using raw bilingual broadcast news data in semi-supervised bilingual acoustic model training. Specifically, we compare the transcription quality provided by a bilingual ASR system with another system performing language diarization at the front-end followed by two monolingual ASR systems chosen based on the assigned language label. Our research focuses on the Frisian-Dutch code-switching (CS) speech that is extracted from the archives of a local radio broadcaster. Using 11 hours of manually transcribed Frisian speech as a reference, we aim to increase the amount of available training data by using these automatic transcription techniques. By merging the manually and automatically transcribed data, we learn bilingual acoustic models and run ASR experiments on the development and test data of the FAME! speech corpus to quantify the quality of the automatic transcriptions. Using these acoustic models, we present speech recognition and CS detection accuracies. The results demonstrate that applying language diarization to the raw speech data to enable using the monolingual resources improves the automatic transcription quality compared to a baseline system using a bilingual ASR system.

↓ Download

Share this

Facebooktwitterlinkedinmail

Publication, Speech & natural language publications Conference Proceeding

How can we help?

Once you hit send…

We’ll match your inquiry to the person who can best help you.

Expect a response within 48 hours.

Our privacy policy
Career call to action image

Make your own mark.

Search jobs
Our work

Case studies

Publications

Timeline of innovation

Areas of expertise

Blog

Institute

Leadership

Press room

Media inquiries

Compliance

Privacy policy

Careers

Job listings

Contact

SRI Ventures

Our locations

Headquarters

333 Ravenswood Ave
Menlo Park, CA 94025 USA

+1 (650) 859-2000

Subscribe to our newsletter

日本支社

SRI International

  • Privacy Policy
  • Cookies
  • DMCA
  • Copyright © 2022 SRI International