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一种基于纳米颗粒的人工耳朵,用于利用深度学习对人类语音中的情感进行个性化分类。

A Nanoparticle-Based Artificial Ear for Personalized Classification of Emotions in the Human Voice Using Deep Learning.

作者信息

Wang Jianfei, Suo Jiao, Liu Dongdong, Zhao Yuliang, Tian Yanling, Bryanston-Cross Peter, Li Wen Jung, Wang Zuobin

机构信息

International Research Centre for Nano Handling and Manufacturing of China, Changchun University of Science and Technology, Changchun, Jilin 130022, China.

School of Engineering, University of Warwick, Coventry CV4 7AL, U.K.

出版信息

ACS Appl Mater Interfaces. 2024 Sep 25;16(38):51274-51282. doi: 10.1021/acsami.4c13223. Epub 2024 Sep 16.

DOI:10.1021/acsami.4c13223
PMID:39285705
Abstract

Artificial intelligence and human-computer interaction advances demand bioinspired sensing modalities capable of comprehending human affective states and speech. However, endowing skin-like interfaces with such intricate perception abilities remains challenging. Here, we have developed a flexible piezoresistive artificial ear (AE) sensor based on gold nanoparticles, which can convert sound signals into electrical signals through changes in resistance. By testing the sensor's performance at both frequency and sound pressure level (SPL), the AE has a frequency response range of 20 Hz to 12 kHz and can sense sound signals from up to 5 m away at a frequency of 1 kHz and an SPL of 126 dB. Furthermore, through deep learning, the device achieves up to 96.9% and 95.0% accuracy in classification and recognition applications for seven emotional and eight urban environmental noises, respectively. Hence, on one hand, our device can monitor the patient's emotional state by their speech, such as sudden yelling and screaming, which can help healthcare workers understand patients' condition in time. On the other hand, the device could also be used for real-time monitoring of noise levels in aircraft, ships, factories, and other high-decibel equipment and environments.

摘要

人工智能和人机交互的发展需要具备理解人类情感状态和语音能力的仿生传感模式。然而,赋予类似皮肤的界面如此复杂的感知能力仍然具有挑战性。在此,我们开发了一种基于金纳米颗粒的柔性压阻式人工耳(AE)传感器,它可以通过电阻变化将声音信号转换为电信号。通过在频率和声压级(SPL)方面测试该传感器的性能,AE的频率响应范围为20Hz至12kHz,并且在1kHz频率和126dB的声压级下能够感知距离达5m远的声音信号。此外,通过深度学习,该设备在针对七种情感和八种城市环境噪声的分类和识别应用中分别实现了高达96.9%和95.0%的准确率。因此,一方面,我们的设备可以通过患者的语音监测其情绪状态,例如突然的大喊大叫,这有助于医护人员及时了解患者的病情。另一方面,该设备还可用于实时监测飞机、船舶、工厂和其他高分贝设备及环境中的噪声水平。

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