TY - JOUR AU - Jorgensen, Charles AB - We present results of electromyographic (EMG) speech recognition on a small vocabulary of 15 English words. EMG speech recognition holds promise for mitigating the effects of high acoustic noise on speech intelligibility in communication systems, including those used by first responders (a focus of this work). We collected 150 examples per word of single-channel EMG data from a male subject, speaking normally while wearing a firefighter’s self-contained breathing apparatus. The signal processing consisted of an activity detector, a feature extractor, and a neural network classifier. Testing produced an overall average correct classification rate on the 15 words of 74% with a 95% confidence interval of (71%, 77%). Once trained, the subject used a classifier as part of a real-time system to communicate to a cellular phone and to control a robotic device. These tasks were performed under an ambient noise level of approximately 95 decibels. We also describe ongoing work on phoneme-level EMG speech recognition. TI - Small-vocabulary speech recognition using surface electromyography JF - Interacting with Computers DO - 10.1016/j.intcom.2006.08.012 DA - 2006-12-10 UR - https://www.deepdyve.com/lp/oxford-university-press/small-vocabulary-speech-recognition-using-surface-electromyography-4zEtKfe8Sc SP - 1242 EP - 1259 VL - 18 IS - 6 DP - DeepDyve ER -