Swarm ant robotics for a dynamic cleaning problem-upper bounds
Yaniv Altshuler, Vladimir Yanovski, et al.
ICARA 2009
In this paper, we present strategies to incorporate long context information directly during the first pass decoding and also for the second pass lattice re-scoring in speech recognition systems. Long-span language models that capture complex syntactic and/or semantic information are seldom used in the first pass of large vocabulary continuous speech recognition systems due to the prohibitive increase in the size of the sentence-hypotheses search space. Typically, n-gram language models are used in the first pass to produce N-best lists, which are then re-scored using long-span models. Such a pipeline produces biased first pass output, resulting in sub-optimal performance during re-scoring. In this paper we show that computationally tractable variational approximations of the long-span and complex language models are a better choice than the standard n-gram model for the first pass decoding and also for lattice re-scoring. © 2012 Elsevier B.V. All rights reserved.
Yaniv Altshuler, Vladimir Yanovski, et al.
ICARA 2009
Jia Cui, Yonggang Deng, et al.
ASRU 2009
Yang Wang, Zicheng Liu, et al.
CVPR 2007
Dorit Nuzman, David Maze, et al.
SYSTOR 2011