Li Jianing, Shi Yating, Chen Jianfeng, Huang Qiaoling, Ye Meidan, Guo Wenxi
Department of Physics, College of Physical Science and Technology, Research Institution for Biomimetics and Soft Matter, Xiamen University, Xiamen 361005, China.
Jiujiang Research Institute, Xiamen University, Jiujiang 332000, China.
Sensors (Basel). 2024 May 9;24(10):3007. doi: 10.3390/s24103007.
In environments where silent communication is essential, such as libraries and conference rooms, the need for a discreet means of interaction is paramount. Here, we present a single-electrode, contact-separated triboelectric nanogenerator (CS-TENG) characterized by robust high-frequency sensing capabilities and long-term stability. Integrating this TENG onto the inner surface of a mask allows for the capture of conversational speech signals through airflow vibrations, generating a comprehensive dataset. Employing advanced signal processing techniques, including short-time Fourier transform (STFT), Mel-frequency cepstral coefficients (MFCC), and deep learning neural networks, facilitates the accurate identification of speaker content and verification of their identity. The accuracy rates for each category of vocabulary and identity recognition exceed 92% and 90%, respectively. This system represents a pivotal advancement in facilitating secure and efficient unobtrusive communication in quiet settings, with promising implications for smart home applications, virtual assistant technology, and potential deployment in security and confidentiality-sensitive contexts.
在诸如图书馆和会议室等无声交流至关重要的环境中,对一种隐秘的交互方式的需求至关重要。在此,我们展示了一种单电极、接触分离式摩擦纳米发电机(CS-TENG),其特点是具有强大的高频传感能力和长期稳定性。将这种摩擦纳米发电机集成到口罩内表面,能够通过气流振动捕获对话语音信号,生成一个全面的数据集。采用包括短时傅里叶变换(STFT)、梅尔频率倒谱系数(MFCC)和深度学习神经网络在内的先进信号处理技术,有助于准确识别说话者内容并验证其身份。各类词汇识别和身份识别的准确率分别超过92%和90%。该系统代表了在安静环境中促进安全高效的非侵入式通信方面的一项关键进展,对智能家居应用、虚拟助手技术以及在安全和保密敏感环境中的潜在部署具有广阔的应用前景。