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引用次数: 135
摘要
提出了一种分段条件随机场框架,用于大词汇量连续语音识别。这种方法的基础是使用声学探测器作为基本输入,并自动构建一组通用的段级特征。检测器流在多个时间尺度(帧、电话、多电话、音节或单词)上运行,并在CRF训练和解码过程中在单词级别进行组合。我们方法的一个关键方面是特征是在单词级别定义的,并且自然地用于解释长跨度现象,如形成峰轨迹,持续时间和音节重音模式。通过使用可分解的一致性特征[1],[2],我们的框架允许对声学和语言模型进行联合或单独的判别训练。使用Bing Mobile (BM)应用程序的语音搜索数据对该框架进行的初步评估结果显示,与HMM基线相比,该框架的绝对性能提高了2%。
A segmental CRF approach to large vocabulary continuous speech recognition
This paper proposes a segmental conditional random field framework for large vocabulary continuous speech recognition. Fundamental to this approach is the use of acoustic detectors as the basic input, and the automatic construction of a versatile set of segment-level features. The detector streams operate at multiple time scales (frame, phone, multi-phone, syllable or word) and are combined at the word level in the CRF training and decoding processes. A key aspect of our approach is that features are defined at the word level, and are naturally geared to explain long span phenomena such as formant trajectories, duration, and syllable stress patterns. Generalization to unseen words is possible through the use of decomposable consistency features [1], [2], and our framework allows for the joint or separate discriminative training of the acoustic and language models. An initial evaluation of this framework with voice search data from the Bing Mobile (BM) application results in a 2% absolute improvement over an HMM baseline.