面向人机界面的舌动耳压信号多层神经网络分类

K. Mamun, Manoj Banik, M. Mace, Mark E. Lutmen, R. Vaidyanathan, Shouyan Wang
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引用次数: 1

摘要

舌动耳压(TMEP)信号已被用于在针对残疾人的辅助人机界面中生成控制命令。本研究的目的是将预期动作的控制动作相关信号与内部发生的生理信号进行分类,这些生理信号会干扰运动间分类。TMEP信号被收集起来,对应于六种与潜在干扰环境相关的受控运动和活动,包括受试者说话、咳嗽或喝酒。信号处理算法包括TMEP信号检测、分割、特征提取与选择、分类。利用小波包变换(WPT)提取分割后的TMEP信号的特征。基于WPT系数的统计特性,设计并测试了多层神经网络。识别干扰和控制运动相关TMEP信号的平均分类性能达到97.05%。基于WPT的TMEP信号分类具有鲁棒性,考虑到这种具有挑战性的环境,多层神经网络可以显著减少辅助人机界面中TMEP信号控制命令的干扰。
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Multi-layer neural network classification of tongue movement ear pressure signal for human machine interface
Tongue movement ear pressure (TMEP) signals have been used to generate controlling commands in assistive human machine interfaces aimed at people with disabilities. The objective of this study is to classify the controlled movement related signals of an intended action from internally occurring physiological signals which can interfere with the inter-movement classification. TMEP signals were collected, corresponding to six types of controlled movements and activity relating to the potentially interfering environment including when a subject spoke, coughed or drank. The signal processing algorithm involved TMEP signal detection, segmentation, feature extraction and selection, and classification. The features of the segmented TMEP signals were extracted using the wavelet packet transform (WPT). A multi-layer neural network was then designed and tested based on statistical properties of the WPT coefficients. The average classification performance for discriminating interference and controlled movement related TMEP signal achieved 97.05%. The classification of TMEP signals based on the WPT is robust and the interferences to the controlling commands of TMEP signals in assistive human machine interface can be significantly reduced using the multi-layer neural network when considered in this challenging environment.
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