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Journal ArticleDOI

On the Importance of the Pearson Correlation Coefficient in Noise Reduction

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TLDR
It is shown that in the context of noise reduction the squared PCC has many appealing properties and can be used as an optimization cost function to derive many optimal and suboptimal noise-reduction filters.
Abstract
Noise reduction, which aims at estimating a clean speech from noisy observations, has attracted a considerable amount of research and engineering attention over the past few decades. In the single-channel scenario, an estimate of the clean speech can be obtained by passing the noisy signal picked up by the microphone through a linear filter/transformation. The core issue, then, is how to find an optimal filter/transformation such that, after the filtering process, the signal-to-noise ratio (SNR) is improved but the desired speech signal is not noticeably distorted. Most of the existing optimal filters (such as the Wiener filter and subspace transformation) are formulated from the mean-square error (MSE) criterion. However, with the MSE formulation, many desired properties of the optimal noise-reduction filters such as the SNR behavior cannot be seen. In this paper, we present a new criterion based on the Pearson correlation coefficient (PCC). We show that in the context of noise reduction the squared PCC (SPCC) has many appealing properties and can be used as an optimization cost function to derive many optimal and suboptimal noise-reduction filters. The clear advantage of using the SPCC over the MSE is that the noise-reduction performance (in terms of the SNR improvement and speech distortion) of the resulting optimal filters can be easily analyzed. This shows that, as far as noise reduction is concerned, the SPCC-based cost function serves as a more natural criterion to optimize as compared to the MSE.

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Citations
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Journal ArticleDOI

On Optimal Frequency-Domain Multichannel Linear Filtering for Noise Reduction

TL;DR: This work formally shows that the minimum variance distortionless response (MVDR) filter is a particular case of the PMWF by properly formulating the constrained optimization problem of noise reduction, and proposes new simplified expressions for thePMWF, the MVDR, and the generalized sidelobe canceller that depend on the signals' statistics only.
Journal ArticleDOI

An Integrated Solution for Online Multichannel Noise Tracking and Reduction

TL;DR: This work combines the multichannel speech presence probability (MC-SPP) that was proposed in an earlier contribution with an alternative formulation of the minima-controlled recursive averaging (MCRA) technique that generalize from the single-channel to the multICHannel case.
Journal ArticleDOI

New Insights Into the MVDR Beamformer in Room Acoustics

TL;DR: The performance evaluation supports the theoretical analysis and demonstrates the tradeoff between speech dereverberation and noise reduction, and shows that maximum noise reduction is achieved when the MVDR beamformer is used for noise reduction only.
Journal ArticleDOI

A novel hybrid methodology for short-term wind power forecasting based on adaptive neuro-fuzzy inference system

TL;DR: A novel hybrid methodology for short-term wind power forecasting is proposed, successfully combining three individual forecasting models using the adaptive neuro-fuzzy inference system (ANFIS).
Journal ArticleDOI

SNR loss: A new objective measure for predicting the intelligibility of noise-suppressed speech

TL;DR: Three new objective measures that can be used for prediction of intelligibility of processed speech in noisy conditions using a critical-band spectral representation of the clean and noise-suppressed signals and are based on the measurement of the SNR loss incurred after the corrupted signal goes through a speech enhancement algorithm.
References
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Book

Pattern classification and scene analysis

TL;DR: In this article, a unified, comprehensive and up-to-date treatment of both statistical and descriptive methods for pattern recognition is provided, including Bayesian decision theory, supervised and unsupervised learning, nonparametric techniques, discriminant analysis, clustering, preprosessing of pictorial data, spatial filtering, shape description techniques, perspective transformations, projective invariants, linguistic procedures, and artificial intelligence techniques for scene analysis.
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Adaptive Signal Processing

TL;DR: This chapter discusses Adaptive Arrays and Adaptive Beamforming, as well as other Adaptive Algorithms and Structures, and discusses the Z-Transform in Adaptive Signal Processing.
Journal ArticleDOI

Suppression of acoustic noise in speech using spectral subtraction

TL;DR: A stand-alone noise suppression algorithm that resynthesizes a speech waveform and can be used as a pre-processor to narrow-band voice communications systems, speech recognition systems, or speaker authentication systems.
Journal ArticleDOI

Adaptive noise cancelling: Principles and applications

TL;DR: It is shown that in treating periodic interference the adaptive noise canceller acts as a notch filter with narrow bandwidth, infinite null, and the capability of tracking the exact frequency of the interference; in this case the canceller behaves as a linear, time-invariant system, with the adaptive filter converging on a dynamic rather than a static solution.