A speech enhancement method combining beamforming with RNN for hearing aids

Author:

Qiu Zhiqian1,Chen Fei2,Ji Junyu3

Affiliation:

1. Tianjin Key Laboratory of Imaging and Sensing Microelectronic Technology School of Microelectronics, Tianjin University, Tianjin, China

2. Microelectronics Research Institute, Shenzhen Tsinghua University Research Institute, Shenzhen, Guangdong, China

3. Shenzhen Zhiting Technology Co, Ltd., Shenzhen, Guangdong, China

Abstract

Speech enhancement is essential for hearing aids. In recent years, many speech enhancement methods based on deep learning have been proven to be effective. However, these speech enhancement methods rarely consider limited hardware resources and have difficulty meeting real-time requirements, which is very important for hearing aids. To solve the above problems, we propose a method that combines beamforming and speech enhancement methods based on deep learning. Beamforming is used to filter background noise and reduce the complexity of noise. Additionally, a new filter bank used in hearing aids is adopted to reduce the complexity of the system. The system was deployed and tested in resource-constrained hearing aids. The effectiveness of the method was verified by objective experiments using standard evaluation indicators. The results showed that the power was 8.43 mA, the signal-to-noise ratio improved by 9.4394 dB, and the PESQ improved by 0.7350. The presented objective and subjective results show that the proposed method achieves better noise suppression than previous methods.

Publisher

IOS Press

Subject

Computational Mathematics,Computer Science Applications,General Engineering

Reference14 articles.

1. Multi-level single-channel speech enhancement using a unified framework for estimating magnitude and phase spectra;Lavanya;IEEE/ACM T Audio Spe,2020

2. Acoustic-to-articulatory mapping with joint optimization of deep speech enhancement and articulatory inversion models;Shahrebabaki;IEEE/ACM T Audio Spe,2022

3. Efficient two-microphone speech enhancement using basic recurrent neural network cell for hearing and hearing aids;Shankar;J Acoust Soc Am,2020

4. A supervised speech enhancement method for smartphone-based binaural hearing aids;Sun;IEEE T Biomed Circ S,2020

5. Voice conversion based augmentation and a hybrid CNN-LSTM model for improving speaker-independent keyword recognition on limited datasets;Wubet;IEEE Access,2022

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