Title
Direct posterior confidence for out-of-vocabulary spoken term detection
Abstract
Spoken term detection (STD) is a key technology for spoken information retrieval. As compared to the conventional speech transcription and keyword spotting, STD is an open-vocabulary task and has to address out-of-vocabulary (OOV) terms. Approaches based on subword units, for example phones, are widely used to solve the OOV issue; however, performance on OOV terms is still substantially inferior to that of in-vocabulary (INV) terms. The performance degradation on OOV terms can be attributed to a multitude of factors. One particular factor we address in this article is the unreliable confidence estimation caused by weak acoustic and language modeling due to the absence of OOV terms in the training corpora. We propose a direct posterior confidence derived from a discriminative model, such as multilayer perceptron (MLP). The new confidence considers a wide-range acoustic context which is usually important for speech recognition and retrieval; moreover, it localizes on detected speech segments and therefore avoids the impact of long-span word context which is usually unreliable for OOV term detection. In this article, we first develop an extensive discussion about the modeling weakness problem associated with OOV terms, and then propose our approach to address this problem based on direct poster confidence. Our experiments carried out on spontaneous and conversational multiparty meeting speech, demonstrate that the proposed technique provides a significant improvement in STD performance as compared to conventional lattice-based confidence, in particular for OOV terms. Furthermore, the new confidence estimation approach is fused with other advanced techniques for OOV treatment, such as stochastic pronunciation modeling and discriminative confidence normalization. This leads to an integrated solution for OOV term detection that results in a large performance improvement.
Year
DOI
Venue
2012
10.1145/2328967.2328969
ACM Transactions on Information Systems (TOIS)
Keywords
Field
DocType
direct poster confidence,new confidence,discriminative confidence normalization,direct posterior confidence,new confidence estimation approach,oov treatment,oov issue,oov term,oov term detection,conventional lattice-based confidence,speech recognition
Pronunciation,Normalization (statistics),Computer science,Speech recognition,Keyword spotting,Multilayer perceptron,Artificial intelligence,Natural language processing,Out of vocabulary,Discriminative model,Language model,Performance improvement
Journal
Volume
Issue
ISSN
30
3
1046-8188
Citations 
PageRank 
References 
5
0.41
93
Authors
6
Name
Order
Citations
PageRank
Dong Wang137539.86
Simon King21438114.49
Joe Frankel331222.78
Ravichander Vipperla4636.16
nicholas evans559454.41
Raphaël Troncy61064102.16