A computationally constrained optimization framework for implementation and tuning of speech enhancement systems

Acoustic Signal Enhancement(2014)

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摘要
In this work, we propose an optimization framework for tuning the parameters of a speech enhancement system to maximize its performance while constraining its computational complexity imposed by a target platform. Some parameters allow for enabling or disabling certain algorithmic components of the system, effectively guiding the implementation effort. The speech enhancement system is deployed in a speech recognition front-end and in a full-duplex telephony system. The optimization variables are the parameters of the system and the performance is measured using phone accuracy rate and mean opinion score, respectively. The problem is then a nonlinear program of combinatorial nature which is solved efficiently using a genetic algorithm. The results show improvement in performance over common tuning and implementation strategies.
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关键词
combinatorial mathematics,genetic algorithms,speech enhancement,computational complexity,computationally constrained optimization framework,full-duplex telephony system,genetic algorithm,nonlinear program,phone accuracy rate measurement,speech enhancement system tuning parameters,speech recognition front-end system
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