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引用次数: 7
摘要
针对[1]中提出的远程语音识别的REMOS (REverberation MOdeling for Speech recognition)概念,提出了一种高效的解码算法,可以将计算复杂度降低约两个数量级,从而允许首次实时实现。REMOS是基于一个组合声学模型,包括一个传统的隐马尔可夫模型(HMM),模拟干净的语音,和一个混响模型。在识别过程中,通过解决对数melspectrum (log-melspec)特征的内部优化问题来估计最可能的干净语音和混响贡献。本文导出了内优化问题的两种近似方法。连接数字识别实验证实,计算复杂度显著降低。在保证找到内部优化问题的全局最优的情况下,基于所提近似的解码算法甚至比内部点优化技术提高了识别精度。
A highly efficient optimization scheme for REMOS-based distant-talking speech recognition
A highly efficient decoding algorithm for the REMOS (REverberation MOdeling for Speech recognition) concept for distant-talking speech recognition as proposed in [1] is suggested to reduce the computational complexity by about two orders of magnitude and thereby allowing for first real-time implementations. REMOS is based on a combined acoustic model consisting of a conventional hidden Markov model (HMM), modeling the clean speech, and a reverberation model. During recognition, the most likely clean-speech and reverberant contributions are estimated by solving an inner optimization problem for logarithmic melspectral (log-melspec) features. In this paper, two approximation techniques for the inner optimization problem are derived. Connected digit recognition experiments confirm that the computational complexity is significantly reduced. Ensuring that the global optima of the inner optimization problem are found, the decoding algorithm based on the proposed approximations even increases the recognition accuracy relative to interior point optimization techniques.