Chan A D, Englehart K, Hudgins B, Lovely D F
Institute of Biomedical Engineering, University of New Brunswick, Fredericton, Canada.
Med Biol Eng Comput. 2001 Jul;39(4):500-4. doi: 10.1007/BF02345373.
It is proposed that myo-electric signals can be used to augment conventional speech-recognition systems to improve their performance under acoustically noisy conditions (e.g. in an aircraft cockpit). A preliminary study is performed to ascertain the presence of speech information within myo-electric signals from facial muscles. Five surface myo-electric signals are recorded during speech, using Ag-AgCl button electrodes embedded in a pilot oxygen mask. An acoustic channel is also recorded to enable segmentation of the recorded myo-electric signal. These segments are processed off-line, using a wavelet transform feature set, and classified with linear discriminant analysis. Two experiments are performed, using a ten-word vocabulary consisting of the numbers 'zero' to 'nine'. Five subjects are tested in the first experiment, where the vocabulary is not randomised. Subjects repeat each word continuously for 1 min; classification errors range from 0.0% to 6.1%. Two of the subjects perform the second experiment, saying words from the vocabulary randomly; classification errors are 2.7% and 10.4%. The results demonstrate that there is excellent potential for using surface myo-electric signals to enhance the performance of a conventional speech-recognition system.
有人提出,可以使用肌电信号来增强传统语音识别系统,以提高其在嘈杂声学环境(如飞机驾驶舱)下的性能。进行了一项初步研究,以确定面部肌肉肌电信号中是否存在语音信息。在语音过程中,使用嵌入飞行员氧气面罩中的银-氯化银纽扣电极记录五个表面肌电信号。还记录了一个声学通道,以便对记录的肌电信号进行分割。这些片段在离线状态下使用小波变换特征集进行处理,并通过线性判别分析进行分类。进行了两项实验,使用由数字“零”到“九”组成的十个单词的词汇表。在第一个实验中,对五名受试者进行测试,词汇表未随机化。受试者连续重复每个单词1分钟;分类错误率在0.0%至6.1%之间。其中两名受试者进行了第二个实验,随机说出词汇表中的单词;分类错误率分别为2.7%和10.4%。结果表明,使用表面肌电信号增强传统语音识别系统的性能具有巨大潜力。