Continuous Electromyographic Speech Recognition with a Multi-Stream Decoding Architecture

ICASSP (4)(2007)

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摘要
In our previous work, we reported a surface electromyographic (EMG) continuous speech recognition system with a novel EMG feature extraction method, E4, which is more robust to EMG noise than traditional spectral features. In this paper, we show that articulatory feature (AF) classifiers can also benefit from the E4 feature, which improve the F-score of the AF classifiers from 0.492 to 0.686. We also show that the E4 feature is less correlated across EMG channels and thus channel combination gains larger improvement in F-score. With a stream architecture, the AF classifiers are then integrated into the decoding framework and improve the word error rate by 11.8% relative from 33.9% to 29.9%.
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关键词
emg,speech recognition,word error rate,articula- tory muscles,channel combination gains,medical signal processing,index terms— speech recognition,articulatory feature classifiers,continuous electromyographic speech recognition,feature extraction,articulatory muscles,speech coding,electromyography,decoding framework,multi-stream decoding architecture,decoding,articulatory features,automatic speech recognition,electrodes,loudspeakers
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