DocumentCode
11645
Title
Robust Audio-Visual Speech Recognition Under Noisy Audio-Video Conditions
Author
Stewart, Darryl ; Seymour, Rowan ; Pass, Adrian ; Ji Ming
Author_Institution
Queen´s Univ. of Belfast, Belfast, UK
Volume
44
Issue
2
fYear
2014
fDate
Feb. 2014
Firstpage
175
Lastpage
184
Abstract
This paper presents the maximum weighted stream posterior (MWSP) model as a robust and efficient stream integration method for audio-visual speech recognition in environments, where the audio or video streams may be subjected to unknown and time-varying corruption. A significant advantage of MWSP is that it does not require any specific measurements of the signal in either stream to calculate appropriate stream weights during recognition, and as such it is modality-independent. This also means that MWSP complements and can be used alongside many of the other approaches that have been proposed in the literature for this problem. For evaluation we used the large XM2VTS database for speaker-independent audio-visual speech recognition. The extensive tests include both clean and corrupted utterances with corruption added in either/both the video and audio streams using a variety of types (e.g., MPEG-4 video compression) and levels of noise. The experiments show that this approach gives excellent performance in comparison to another well-known dynamic stream weighting approach and also compared to any fixed-weighted integration approach in both clean conditions or when noise is added to either stream. Furthermore, our experiments show that the MWSP approach dynamically selects suitable integration weights on a frame-by-frame basis according to the level of noise in the streams and also according to the naturally fluctuating relative reliability of the modalities even in clean conditions. The MWSP approach is shown to maintain robust recognition performance in all tested conditions, while requiring no prior knowledge about the type or level of noise.
Keywords
audio streaming; speech recognition; video streaming; audio stream; dynamic stream weighting approach; fixed-weighted integration approach; large XM2VTS database; maximum weighted stream posterior model; noisy audio-video conditions; speaker-independent audio-visual speech recognition; stream integration method; stream weights; time-varying corruption; video stream; Automatic speech recognition; human computer interaction; speech recognition;
fLanguage
English
Journal_Title
Cybernetics, IEEE Transactions on
Publisher
ieee
ISSN
2168-2267
Type
jour
DOI
10.1109/TCYB.2013.2250954
Filename
6495474
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