On Effective Dual-Channel Noise Reduction for Speech Recognition in Car Environment

  • Ahn, Sung-Joo (Department of Electronics and Computer Engineering, Korea University) ;
  • Kang, Sun-Mee (Department of Computer Science, Seokyeong University) ;
  • Ko, Han-Seok (Department of Electronics and Computer Engineering, Korea University)
  • 발행 : 2004.03.01

초록

This paper concerns an effective dual-channel noise reduction method to increase the performance of speech recognition in a car environment. While various single channel methods have already been developed and dual-channel methods have been studied somewhat, their effectiveness in real environments, such as in cars, has not yet been formally proven in terms of achieving acceptable performance level. Our aim is to remedy the low performance of the single and dual-channel noise reduction methods. This paper proposes an effective dual-channel noise reduction method based on a high-pass filter and front-end processing of the eigendecomposition method. We experimented with a real multi-channel car database and compared the results with respect to the microphones arrangements. From the analysis and results, we show that the enhanced eigendecomposition method combined with high-pass filter indeed significantly improve the speech recognition performance under a dual-channel environment.

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