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An Extraction Method of Acoustic Features for Speech Recognition

並列摘要


This study presents a novel method that deals with extracting acoustic features for recognition of isolated speech words. This extraction method is based on the use of a bank of 41 Gabor filers, which aim to select the specific modulation frequencies and bring a limitation of information redundancy on feature level. The robustness and performance of proposed features, named as Gabor Mel Spectrum features (GMS features) are validated on isolated speech words in both clean and noisy environment case and compared to those of two classic methods such as PLP-features and MFCC-features. The recognition results obtained using HMM, show that our extraction method is more robust and achieve better recognition rates than the two latter methods.

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