NeuroAMP: A Novel End-to-end General Purpose Deep Neural Amplifier for Personalized Hearing Aids
Shafique Ahmed, Ryandhimas E. Zezario, Hui-Guan Yuan, Amir Hussain, Hsin-Min Wang, Wei-Ho Chung, Yu Tsao

TL;DR
NeuroAMP introduces a deep neural network framework for personalized hearing aid amplification, integrating noise reduction and leveraging diverse architectures, with the Transformer model showing superior performance in speech and music enhancement tasks.
Contribution
This work presents NeuroAMP, a novel end-to-end deep neural amplifier for hearing aids, incorporating multiple architectures and a noise reduction extension, with extensive data augmentation for improved generalization.
Findings
Transformer architecture achieves highest performance metrics.
Denoising NeuroAMP outperforms conventional approaches.
Data augmentation maintains high performance on unseen datasets.
Abstract
The prevalence of hearing aids is increasing. However, optimizing the amplification processes of hearing aids remains challenging due to the complexity of integrating multiple modular components in traditional methods. To address this challenge, we present NeuroAMP, a novel deep neural network designed for end-to-end, personalized amplification in hearing aids. NeuroAMP leverages both spectral features and the listener's audiogram as inputs, and we investigate four architectures: Convolutional Neural Network (CNN), Long Short-Term Memory (LSTM), Convolutional Recurrent Neural Network (CRNN), and Transformer. We also introduce Denoising NeuroAMP, an extension that integrates noise reduction along with amplification capabilities for improved performance in real-world scenarios. To enhance generalization, a comprehensive data augmentation strategy was employed during training on diverse…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Neuroscience and Neural Engineering
MethodsAttention Is All You Need · Byte Pair Encoding · Layer Normalization · Residual Connection · Linear Layer · Dense Connections · Multi-Head Attention · Position-Wise Feed-Forward Layer · Adam · Softmax
