期刊文献+

Speech Detection in Non—Stationary Noise Based on the 1/f Process

原文传递
导出
摘要 In this paper,an effective and robust active speech detection method is proposed based on the 1/f process technique for signals under non-stationary noisy environments.The Gaussian 1/f process ,a mathematical model for statistically self-similar radom processes based on fractals,is selected to model the speech and the background noise.An optimal Bayesian two-class classifier is developed to discriminate them by their 1/f wavelet coefficients with Karhunen-Loeve-type properties.Multiple templates are trained for the speech signal,and the parameters of the background noise can be dynamically adapted in runtime to model the variation of both the speech and the noise.In our experiments,a 10-minute long speech with different types of noises ranging from 20dB to 5dB is tested using this new detection method.A high performance with over 90% detection accuracy is achieved when average SNR is about 10dB.
作者 王帆 郑方
出处 《Journal of Computer Science & Technology》 SCIE EI CSCD 2002年第1期83-89,共7页 计算机科学技术学报(英文版)
  • 相关文献

参考文献14

  • 1Tanrikulu O, Baykal B, Constantinides A G, et al. Residual echo signal in critically sampled sub-band acoustic echo cancellers based on IIR and FIR filter banks. IEEE Trans. Signal Processing, 1997, 45(4): 901-912.
  • 2Lamel L F, Labiner L R, Rosenberg A E, et al. An improved endpoint detector for isolated word recognition. IEEE Trans. Acoustic, Speech and Signal Processing, 1981, 29(4): 777-785.
  • 3Savoji M H. A robust algorithm for accurate endpointing of speech. Speech Communication, 1989, 8: 45-60.
  • 4Juuqua J C, Mak B. Reaves B. A robust algorithm for word boundary detection in the presence of noise. IEEE Trans. Speech and Audio Processing, 1994, 2(3): 406-412.
  • 5Robiner L R, Sambur M R. Voiced-unvoiced-silence detection using the Itakura LPC distance measures. In Proc. IEEE Int. Conf Acoustic, Speech, Signal Processing, May, 1977, pp.323-326.
  • 6Junqua J C, Reaves B, Mar B. A study of endpoint detection algorithms in adverse condition: Incidence on a DtW and HMM recognize. In Proc. Europseech'91: 1991, pp.1371-1374.
  • 7Abdallah I, Montresor S, Baudry M. Robust speech/non speech detection in adverse conditions using an entropy based estimator, In Proc. IEES Int. Conf. Digital Signal Processing, July: 1997, 2:757-750.
  • 8Wilpon J G, Rabiner L R. Application of hidden Markov models to automatic speech endpoint detection. Computer. Speech and Language, 1987, 2:321-341.
  • 9Tanyer S G, Ozer H. Voice activity detection in nonstationary noise. IEEE Trans. Speech and Audio Processing, 2000, 8(4): 478-482.
  • 10Kumar A, Mullick S K. Nonlinear dynamical analysis of speech. J. Acoustical Society of America, 1996, 100(1):11 615-629.

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部