Xiao Yanan, Li He, Gu Tianyi, Jia Xiaoteng, Sun Shixiang, Liu Yong, Wang Bin, Tian He, Sun Peng, Liu Fangmeng, Lu Geyu
State Key Laboratory of Integrated Optoelectronics, College of Electronic Science and Engineering, Jilin University, Changchun, 130012, People's Republic of China.
School of Integrated Circuits, Tsinghua University, Beijing, 100084, People's Republic of China.
Nanomicro Lett. 2024 Dec 30;17(1):101. doi: 10.1007/s40820-024-01605-z.
Wearable pressure sensors capable of adhering comfortably to the skin hold great promise in sound detection. However, current intelligent speech assistants based on pressure sensors can only recognize standard languages, which hampers effective communication for non-standard language people. Here, we prepare an ultralight TiCT MXene/chitosan/polyvinylidene difluoride composite aerogel with a detection range of 6.25 Pa-1200 kPa, rapid response/recovery time, and low hysteresis (13.69%). The wearable aerogel pressure sensor can detect speech information through the throat muscle vibrations without any interference, allowing for accurate recognition of six dialects (96.2% accuracy) and seven different words (96.6% accuracy) with the assistance of convolutional neural networks. This work represents a significant step forward in silent speech recognition for human-machine interaction and physiological signal monitoring.
能够舒适地粘附在皮肤上的可穿戴压力传感器在声音检测方面具有巨大潜力。然而,目前基于压力传感器的智能语音助手只能识别标准语言,这阻碍了非标准语言人群的有效交流。在此,我们制备了一种超轻的TiCT MXene/壳聚糖/聚偏二氟乙烯复合气凝胶,其检测范围为6.25 Pa至1200 kPa,具有快速的响应/恢复时间和低滞后性(13.69%)。这种可穿戴气凝胶压力传感器能够通过咽喉肌肉振动检测语音信息而不受任何干扰,在卷积神经网络的辅助下,能够准确识别六种方言(准确率96.2%)和七个不同的单词(准确率96.6%)。这项工作在用于人机交互和生理信号监测的无声语音识别方面迈出了重要一步。