Advances in Intelligent Hearing Aids: Deep Learning Approaches to Selective Noise Cancellation
Journal:
arXiv
Published Date:
Jun 25, 2025
Abstract
The integration of artificial intelligence into hearing assistance marks a
paradigm shift from traditional amplification-based systems to intelligent,
context-aware audio processing. This systematic literature review evaluates
advances in AI-driven selective noise cancellation (SNC) for hearing aids,
highlighting technological evolution, implementation challenges, and future
research directions. We synthesize findings across deep learning architectures,
hardware deployment strategies, clinical validation studies, and user-centric
design. The review traces progress from early machine learning models to
state-of-the-art deep networks, including Convolutional Recurrent Networks for
real-time inference and Transformer-based architectures for high-accuracy
separation. Key findings include significant gains over traditional methods,
with recent models achieving up to 18.3 dB SI-SDR improvement on
noisy-reverberant benchmarks, alongside sub-10 ms real-time implementations and
promising clinical outcomes. Yet, challenges remain in bridging lab-grade
models with real-world deployment - particularly around power constraints,
environmental variability, and personalization. Identified research gaps
include hardware-software co-design, standardized evaluation protocols, and
regulatory considerations for AI-enhanced hearing devices. Future work must
prioritize lightweight models, continual learning, contextual-based
classification and clinical translation to realize transformative hearing
solutions for millions globally.