A high-performance auditory feature for robust speech recognition
نویسندگان
چکیده
An auditory feature extraction algorithm for robust speech recognition in adverse acoustic environments is proposed. Based on the analysis of human auditory system, the feature extraction algorithm consists of several modules: FFT, outer-middle-ear transfer function, frequency conversion from linear to Bark scales, auditory filtering, nonlinearity, and discrete cosine transform. Three recognition experiments have been conducted on connected digit recognition in wireless and land-line communications using handsets and handsfree microphones. Compared to LPCC and MFCC features, the proposed feature has shown 11% to 23% error-rate reductions on average in handset and hands-free acoustic environments in the experiments.
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