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Improving Diverse Methods for Learning Representations (Paperback)

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Description


Hearing aids are clinically proven to improve the quality of life of hearing-impaired

individuals. However, despite this, many people who could benefit from a hearing

aid do not use one. The most common reason for this is that they perform poorly in

noisy environments. Machine learning presents a collection of powerful methods for

attenuating noise in speech signals. Moreover, state-of-the-art hearing aids are being

designed with more powerful processors that can run machine learning algorithms.

Several key factors make the deployment of machine learning to hearing aids challenging.

Firstly, many state-of-the-art machine learning methods have high resource

requirements (e.g., GPUs or large amounts of memory). Hence, these resource-intensive

models cannot be run in real-time in low-complexity systems. Secondly, methods need

to be causal (i.e., do not depend on access to future information). More generally,

an issue is that the objectives that speech enhancement/separation models typically

optimise (e.g., L1 or L2) correlate poorly with perceptual quality.

The goal of this thesis is to develop improved models for attenuating noise in speech

signals. Specifically, we aim to develop more principled models and better understand

existing frameworks. Overall, the objective is to develop low-complexity models for

attenuating noise in speech signals.


Product Details
ISBN: 9798869051615
Publisher: Chopra
Publication Date: November 27th, 2023
Pages: 190
Language: English