Speech Polarity Detection Using Hilbert Phase Information
D. Govind, Anju Susan Biju, Aguthu Smily

TL;DR
This paper introduces a novel speech polarity detection method based on Hilbert phase analysis of the analytic signal, achieving accuracy comparable to state-of-the-art methods and demonstrating robustness in noisy conditions.
Contribution
The paper presents a new approach using Hilbert phase information and excitation instants for automatic speech polarity detection, with comparable accuracy and improved noise robustness.
Findings
Achieves polarity detection accuracy similar to residual skewness method.
Provides consistent results for electro-glottogram signals.
Shows robustness in noisy environments with various SNRs.
Abstract
The objective of the present work is to propose a method to automatically detect polarity of the speech signals by estimating instants of significant excitation of the vocaltract and the cosine phase of the analytic signal representation. The phase changes in the analytic signal around the Hilbert envelope (HE) peaks are found to vary according to the polarity of the given speech signal. The relevant HE peaks for the Hilbert phase analysis are selected by estimating the instants of significant excitation in speech. The speech polarity identification rate obtained for the proposed method is almost equal to the state of the art residual skewness method for speech polarity detection. The proposed method also provides the same results for the polarity detection in electro-glottogram signals. Finally, the robustness of the proposed method is confirmed from the reduced detection error rates…
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Taxonomy
TopicsSpeech and Audio Processing · Speech Recognition and Synthesis · Blind Source Separation Techniques
