Advanced Two-Sensor Adaptive Algorithms for Noise Reduction in Dispersive and Sparse Acoustic Environments
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University of Tlemcen
Abstract
In this thesis, we address the problem of acoustic noise reduction and speech enhancement in
modern telecommunication systems using two-sensors adaptive filtering and intelligent
learning-based approaches. The research focuses on the development of advanced two-sensor
adaptive algorithms capable of efficiently separating speech from noise in dispersive and
sparse acoustic environments, where conventional methods often fail. In the first part of this
project, we propose a novel Neural Network-based Variable Step-Size Feed-forward NLMS
(NN-V-FNLMS) algorithm. This approach integrates a simple neural network to dynamically
estimate the adaptation step-size, thus overcoming the inherent trade-off between fast
convergence and low steady-state error found in conventional algorithms. A Voice Activity
Detector (VAD) is also incorporated to control filter updates and improve computational
efficiency. To further enhance robustness and adaptability, we propose a contribution that
introduces an advanced Deep Learning Variable Step-Size Feed-forward NLMS (DL-VSS
FNLMS) algorithm. This model employs a Recurrent Neural Network (RNN) with Long
Short-Term Memory (LSTM) layers to predict optimal step-size parameters based on rich
acoustic
features,
including
Mel-Frequency
Cepstral
Coefficients
(MFCCs),
GammatoneCepstral Coefficients (GTCCs), and spectral representations on the ERB, Bark,
and Mel scales. This deep model dynamically adjusts the adaptation process in complex
acoustic conditions, achieving superior performance in both dispersive and sparse
environments. Experimental evaluations demonstrate that the proposed algorithms
significantly improve convergence speed, stability, and speech quality, while ensuring better
noise suppression compared to conventional LMS/NLMS and classical VSS algorithms. The
results confirm that the integration of neural networks and deep learning into two-sensor
adaptive filtering offers a powerful and flexible solution for real-world acoustic noise
reduction and speech enhancement.