Using missing feature theory to actively select features for robust speech recognition with interruptions, filtering and noise KN-37
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[1] Steve Young,et al. A review of large-vocabulary continuous-speech recognition , 1996 .
[2] Roger K. Moore,et al. Hidden Markov model decomposition of speech and noise , 1990, International Conference on Acoustics, Speech, and Signal Processing.
[3] Richard Lippmann,et al. Accurate consonant perception without mid-frequency speech energy , 1996, IEEE Trans. Speech Audio Process..
[4] I. Pollack,et al. Effects of Differentiation, Integration, and Infinite Peak Clipping upon the Intelligibility of Speech , 1948 .
[5] Richard Lippmann,et al. Improving wordspotting performance with artificially generated data , 1996, 1996 IEEE International Conference on Acoustics, Speech, and Signal Processing Conference Proceedings.
[6] J. C. Steinberg,et al. Factors Governing the Intelligibility of Speech Sounds , 1945 .
[7] G. A. Miller,et al. The Intelligibility of Interrupted Speech , 1948 .
[8] Volker Tresp,et al. Some Solutions to the Missing Feature Problem in Vision , 1992, NIPS.
[9] Richard Lippmann,et al. Speech recognition by machines and humans , 1997, Speech Commun..
[10] R. G. Leonard,et al. A database for speaker-independent digit recognition , 1984, ICASSP.
[11] Karl D. Kryter. Speech Bandwidth Compression through Spectrum Selection , 1960 .