舌骨上肌活动对舌运动的估计

M. Sasaki, T. Arakawa, Atsushi Nakayama, G. Obinata, M. Yamaguchi
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引用次数: 11

摘要

注意到舌头的自主运动,它能够传达残疾人的意图,我们使用下颌下方的肌电图信号同时估计舌头的位置和接触力。我们将一个有九个电极的多通道电极贴在下颌的下侧。然后,利用单极导联得到许多肌电信号,我们计算了9个电极中任意两个之间的36 (= 9C2)通道肌电信号。利用神经网络将这些肌电图信号与舌头的运动联系起来,我们证实了我们能够准确地估计舌头的位置和接触力,相关系数大于0.9,均方根误差小于10%。此外,我们建立了一个神经网络来估计吞咽、打哈欠和张嘴,这是错误估计的潜在来源,并引入掩模处理来减少95%以上的自愿舌头运动的估计误差,我们建议精确地从下颌下方获得的肌电信号中提取该运动的信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of tongue movement based on suprahyoid muscle activity
With attention to voluntary tongue motion, which is capable of communicating the intentions of a person with a disability, we estimated the position and contact force of the tongue simultaneously using EMG signals of the underside of the jaw. We affixed a multi-channel electrode with nine electrodes to the underside of the jaw. Then, deriving many EMG signals using monopolar leads, we calculated 36 (= 9C2) channel EMG signals between any two of the nine electrodes. Associating these EMG signals and tongue movement using a neural network, we confirmed our ability to estimate the tongue position and contact force with precision, with a correlation coefficient greater than 0.9 and RMS error less than 10%. Furthermore, building a neural network estimating deglutition, yawning, and mouth opening, which are potential origins of false estimation, and introducing mask processing to reduce estimation error in voluntary tongue movement more than 95%, we suggest precise extraction of only the signal of that movement from EMG signals obtainable from the underside of the jaw.
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