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On the use of peripheral autonomic signals for binary control of body-machine interfaces

机译:关于使用外围自主信号进行人机界面的二进制控制

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摘要

In this work, the potential of using peripheral autonomic (PA) responses as control signals for body-machine interfaces that require no physical movement was investigated. Electrodermal activity, skin temperature, heart rate and respiration rate were collected from six participants and hidden Markov models (HMMs) were used to automatically detect when a subject was performing music imagery as opposed to being at rest. Experiments were performed under controlled silent conditions as well as in the presence of continuous and startle (e.g. door slamming) ambient noise. By developing subject-specific HMMs, music imagery was detected under silent conditions with the average sensitivity and specificity of 94.2% and 93.3%, respectively. In the presence of startle noise stimuli, the system sensitivity and specificity levels of 78.8% and 80.2% were attained, respectively. In environments corrupted by continuous ambient and startle noise, the system specificity further decreased to 75.9%. To improve the system robustness against environmental noise, a startle noise detection and compensation strategy were proposed. Once in place, performance levels were shown to be comparable to those observed in silence. The obtained results suggest that PA signals, combined with HMMs, can be useful tools for the development of body-machine interfaces that allow individuals with severe motor impairments to communicate and/or to interact with their environment.
机译:在这项工作中,研究了使用外围自主神经(PA)响应作为不需要身体运动的人体-机器界面的控制信号的潜力。从六个参与者中收集了皮肤电活动,皮肤温度,心率和呼吸频率,并使用隐马尔可夫模型(HMM)自动检测对象何时进行音乐成像而不是静止。实验是在无声的受控条件下进行的,并且在连续不断且令人吃惊的(例如,门猛烈撞击)环境噪声中进行。通过开发特定主题的HMM,可以在无声条件下检测到音乐图像,平均灵敏度和特异性分别为94.2%和93.3%。在出现惊吓噪声刺激的情况下,系统灵敏度和特异性水平分别达到78.8%和80.2%。在连续不断的环境噪声和惊吓噪声破坏的环境中,系统特异性进一步降至75.9%。为了提高系统抗环境噪声的鲁棒性,提出了一种惊吓的噪声检测与补偿策略。一旦安装到位,性能水平可与静默观察到的水平相媲美。获得的结果表明,PA信号与HMM结合在一起可以成为开发人体与机器​​接口的有用工具,从而使患有严重运动障碍的人能够与其周围环境进行交流和/或互动。

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