Publication | Closed Access
A robust voice activity detector for wireless communications using soft computing
129
Citations
19
References
1998
Year
Wireless CommunicationsDiscontinuous TransmissionEngineeringBiometricsVoice Detection AlgorithmSpeech RecognitionSpeech CodingPattern RecognitionNoiseRobust Speech RecognitionVoice RecognitionHealth SciencesFuzzy RulesComputer ScienceMobile ComputingDistant Speech RecognitionSignal ProcessingSpeech CommunicationSpeech TechnologyVoiceSpeech ProcessingSpeech InputSpeech PerceptionVoice Technology
Discontinuous transmission based on speech/pause detection represents a valid solution to improve the spectral efficiency of new generation wireless communication systems. In this context, robust voice activity detection (VAD) algorithms are required, as traditional solutions present a high misclassification rate in the presence of the background noise typical of mobile environments. This paper presents a voice detection algorithm which is robust to noisy environments, thanks to a new methodology adopted for the matching process. More specifically, the VAD proposed is based on a pattern recognition approach in which the matching phase is performed by a set of six fuzzy rules, trained by means of a new hybrid learning tool. A series of objective tests performed on a large speech database, varying the signal-to-noise ratio (SNR), the types of background noise, and the input signal level, showed that, as compared with the VAD standardized by ITU-T in Recommendation G.729 annex B, the fuzzy VAD, on average, achieves an improvement in reduction both of the activity factor of about 25% and of the clipping introduced of about 43%. Informal listening tests also confirm an improvement in the perceived speech quality.
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