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Channel Modeling Applied to Robust Automatic Speech Recognition

by Sklar, Alexander Gabriel

Abstract (Summary)
In automatic speech recognition systems (ASRs), training is a critical phase to the systems success. Communication media, either analog (such as analog landline phones) or digital (VoIP) distort the speakers speech signal often in very complex ways: linear distortion occurs in all channels, either in the magnitude or phase spectrum. Non-linear but time-invariant distortion will always appear in all real systems. In digital systems we also have network effects which will produce packet losses and delays and repeated packets. Finally, one cannot really assert what path a signal will take, and so having error or distortion in between is almost a certainty. The channel introduces an acoustical mismatch between the speaker's signal and the trained data in the ASR, which results in poor recognition performance. The approach so far, has been to try to undo the havoc produced by the channels, i.e. compensate for the channel's behavior. In this thesis, we try to characterize the effects of different transmission media and use that as an inexpensive and repeatable way to train ASR systems.
Bibliographical Information:

Advisor:Michael Scordilis; Xiaodang Cai; SubramanianRamakrishnan

School:University of Miami

School Location:USA - Florida

Source Type:Master's Thesis

Keywords:electrical and computer engineering

ISBN:

Date of Publication:12/17/2007

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