Title :
Far-Field Speaker Recognition
Author :
Jin, Qin ; Schultz, Tanja ; Waibel, Alex
Author_Institution :
Carnegie Mellon Univ., Pittsburgh
Abstract :
In this paper, we study robust speaker recognition in far-field microphone situations. Two approaches are investigated to improve the robustness of speaker recognition in such scenarios. The first approach applies traditional techniques based on acoustic features. We introduce reverberation compensation as well as feature warping and gain significant improvements, even under mismatched training-testing conditions. In addition, we performed multiple channel combination experiments to make use of information from multiple distant microphones. Overall, we achieved up to 87.1% relative improvements on our Distant Microphone database and found that the gains hold across different data conditions and microphone settings. The second approach makes use of higher-level linguistic features. To capture speaker idiosyncrasies, we apply n-gram models trained on multilingual phone strings and show that higher-level features are more robust under mismatching conditions. Furthermore, we compared the performances between multilingual and multiengine systems, and examined the impact of a number of involved languages on recognition results. Our findings confirm the usefulness of language variety and indicate a language independent nature of this approach, which suggests that speaker recognition using multilingual phone strings could be successfully applied to any given language.
Keywords :
microphones; speaker recognition; acoustic features; far-field microphone; far-field speaker recognition; feature warping; higher-level features; language variety; multilingual phone strings; multiple channel combination experiments; multiple distant microphones; n-gram models; reverberation compensation; speaker idiosyncrasies; Computer science; Degradation; Microphones; Natural languages; Reverberation; Robustness; Spatial databases; Speaker recognition; Speech; Testing; Far-field microphones; mismatched conditions; multilingual phone strings; robust speaker recognition;
Journal_Title :
Audio, Speech, and Language Processing, IEEE Transactions on
DOI :
10.1109/TASL.2007.902876