7 research outputs found
Joint Minimum Processing Beamforming and Near-end Listening Enhancement
We consider speech enhancement for signals picked up in one noisy environment
that must be rendered to a listener in another noisy environment. For both
far-end noise reduction and near-end listening enhancement, it has been shown
that excessive focus on noise suppression or intelligibility maximization may
lead to excessive speech distortions and quality degradations in favorable
noise conditions, where intelligibility is already at ceiling level. Recently
[1,2] propose to remedy this with a minimum processing framework that either
reduces noise or enhances listening a minimum amount given that a certain
intelligibility criterion is still satisfied. Additionally, it has been shown
that joint consideration of both environments improves speech enhancement
performance. In this paper, we formulate a joint far- and near-end minimum
processing framework, that improves intelligibility while limiting speech
distortions in favorable noise conditions. We provide closed-form solutions to
specific boundary scenarios and investigate performance for the general case
using numerical optimization. We also show that concatenating existing minimum
processing far- and near-end enhancement methods preserves the effects of the
initial methods. Results show that the joint optimization can further improve
performance compared to the concatenated approach.Comment: Submitted to ICASSP 202
Minimum Processing Near-end Listening Enhancement
The intelligibility and quality of speech from a mobile phone or public
announcement system are often affected by background noise in the listening
environment. By pre-processing the speech signal it is possible to improve the
speech intelligibility and quality -- this is known as near-end listening
enhancement (NLE). Although, existing NLE techniques are able to greatly
increase intelligibility in harsh noise environments, in favorable noise
conditions the intelligibility of speech reaches a ceiling where it cannot be
further enhanced. Actually, the focus of existing methods solely on improving
the intelligibility causes unnecessary processing of the speech signal and
leads to speech distortions and quality degradations. In this paper, we provide
a new rationale for NLE, where the target speech is minimally processed in
terms of a processing penalty, provided that a certain performance constraint,
e.g., intelligibility, is satisfied. We present a closed-form solution for the
case where the performance criterion is an intelligibility estimator based on
the approximated speech intelligibility index and the processing penalty is the
mean-square error between the processed and the clean speech. This produces an
NLE method that adapts to changing noise conditions via a simple gain rule by
limiting the processing to the minimum necessary to achieve a desired
intelligibility, while at the same time focusing on quality in favorable noise
situations by minimizing the amount of speech distortions. Through simulation
studies, we show the proposed method attains speech quality on par or better
than existing methods in both objective measurements and subjective listening
tests, whilst still sustaining objective speech intelligibility performance on
par with existing methods