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Open accessJournal ArticleDOI
50 Citations
The facility to record a voice signal is an advantage over other invasive techniques.
In this paper we propose a scheme for developing a voice conversion system that converts the speech signal uttered by a source speaker to a speech signal having the voice characteristics of the target speaker.
As a step toward supporting voice communications in such environments, we propose an adaptation scheme that takes both voice coding (i. e., compression) and modulation as parameters.
The lossless reproduction of recorded voice signal can be achieved at the receiver end with a lower modulation order.
Proceedings ArticleDOI
Qiang Cheng, Jeffrey Sorensen 
07 May 2001
86 Citations
However, using speech analysis techniques, one may design an effective data signal that can be used to hide an arbitrary message in a speech signal.
Proceedings ArticleDOI
20 May 2010
15 Citations
RoadSpeak achieves interruption-free communication through the use of voice chat message buffering, flow control and in-order delivery of voice messages to participants.
Voice transferring method over SMS is useful in situations when signal strength is low and due to poor signal strength voice call connection is not possible to initiate or signal is dropped during voice call.
The paper presents a novel adaptive pitch-synchronous analysis method for simultaneous estimation of voice source and vocal tract (formant/antiformant) parameters from the speech signal.
A voice signal is decomposed by our method evidencing some advantages in comparison with traditional EMD and noise-assisted versions.

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