Title :
A robust voice activity detector for wireless communications using soft computing
Author :
Beritelli, Francesco ; Casale, Salvatore ; Cavallaero, A.
Author_Institution :
Ist. di Inf. e Telecommun., Catania Univ., Italy
fDate :
12/1/1998 12:00:00 AM
Abstract :
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
Keywords :
fuzzy logic; pattern recognition; signal detection; speech coding; speech intelligibility; voice communication; GSM; SNR; TU-T Recommendation G.729; background noise; discontinuous transmission; fuzzy rules; hybrid learning tool; informal listening tests; input signal level; large speech database; matching process; misclassification rate; mobile environments; objective tests; pattern recognition; robust voice activity detector; signal-to-noise ratio; soft computing; spectral efficiency; speech coder; speech quality; speech/pause detection; voice detection algorithm; wireless communications; Background noise; Context; Detection algorithms; Detectors; Noise robustness; Signal to noise ratio; Speech; Testing; Wireless communication; Working environment noise;
Journal_Title :
Selected Areas in Communications, IEEE Journal on