Abstract

In this paper, a binaural beamforming algorithm for hearing aid applications is introduced.The beamforming algorithm is designed to be robust to some error in the estimate of the target speaker direction. The algorithm has two main components: a robust target linearly constrained minimum variance (TLCMV) algorithm based on imposing two constraints around the estimated direction of the target signal, and a post-processor to help with the preservation of binaural cues. The robust TLCMV provides a good level of noise reduction and low level of target distortion under realistic conditions. The post-processor enhances the beamformer abilities to preserve the binaural cues for both diffuse-like background noise and directional interferers (competing speakers), while keeping a good level of noise reduction. The introduced algorithm does not require knowledge or estimation of the directional interferers' directions nor the second-order statistics of noise-only components. The introduced algorithm requires an estimate of the target speaker direction, but it is designed to be robust to some deviation from the estimated direction. Compared with recently proposed state-of-the-art methods, comprehensive evaluations are performed under complex realistic acoustic scenarios generated in both anechoic and mildly reverberant environments, considering a mismatch between estimated and true sources direction of arrival. Mismatch between the anechoic propagation models used for the design of the beamformers and the mildly reverberant propagation models used to generate the simulated directional signals is also considered. The results illustrate the robustness of the proposed algorithm to such mismatches.

Highlights

  • A HEARING aid is a common and effective solution to sensorineural hearing loss

  • The performance of our proposed beamformer “Robust target linearly constrained minimum variance (TLCMV)” is first compared with the Binaural Minimum Variance Distortionless Response (BMVDR), which has more degrees of freedom available for noise reduction, in order to assess the effect of reducing the number of degrees of freedom for the Robust TLCMV

  • The results show that the performance of the proposed Robust TLCMV is competitive compared to the BMVDR, despite a reduced number of degrees of freedom available for noise reduction

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Summary

INTRODUCTION

A HEARING aid is a common and effective solution to sensorineural hearing loss. Despite enormous advances in hearing aid technology, the performance of hearing aids under noisy environments remains one of the most common complaints from hearing aid users [1], [2], and hearing-impaired people face. We contribute in 1) designing a binaural beamformer which is robust to mismatch in target propagation models, 2) proposing a modified post-processor method preserving the binaural cues of all acoustic scene components (target, diffuselike background, directional interferers), with a good tradeoff between noise reduction and cues preservations. The binaural cues preservation are achieved by using a simplified and improved version of the coherencebased post-processor method in [41], for classification and mixing of binaural signals Both the proposed Robust TLCMV and the post-processor do not rely on any assumption for the propagation model (or DOAs) of the interferers (competing speakers).

System Notations
Beamformer Microphone Configuration
THE PROPOSED BEAMFORMING ALGORITHM
The Proposed Robust TLCMV Beamforming Algorithm
PERFORMANCE MEASUREMENT
EXPERIMENTAL SETUP
SYSTEM EVALUATION AND SIMULATION RESULTS
CCMBB and a Method With Direct Mixing
Robust TLCMV With CCMBB and DOA Mismatch
Robust TLCMV With CCMBB With DOA Mismatch and HRTF Mismatch
VIII. CONCLUSION
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