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Robust speech recognition using noise suppression based on multiple composite models and multi-pass search

机译:基于多个复合模型和多通搜索,使用噪声抑制的强大语音识别

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This paper presents robust speech recognition using a noise suppression method based on multi-model compositions and multi-pass search. In real environments, many kinds of noise signals exists, and input speech for speech recognition systems include them. Our task in the E-Nightingale project is speech recognition of voice memoranda spoken by nurses during actual work at hospitals. To obtain good recognized candidates, suppressing many kinds of noise signals at once to find target speech is important. First, before noise suppression, to find speech and noise label sequences, we introduce multi-pass search with acoustic models including many kinds of noise models and their compositions, their n-gram models, and their lexicon. Second, noise suppression based on models is performed using the multiple composite models selected by recognized label sequences with time alignments. We evaluated this approach using the E-Nightingale task, and the proposed method outperformed the conventional method.
机译:本文呈现了基于多模型组合物和多通搜索的噪声抑制方法的强大语音识别。在真实环境中,存在多种噪声信号,并且对语音识别系统的输入语音包括它们。我们在电子夜莺项目中的任务是医院在医院实际工作中由护士讲话的语音备忘录。为了获得良好的认可候选者,一次抑制许多种类的噪声信号以找到目标语音很重要。首先,在噪声抑制之前,寻找语音和噪声标签序列,我们将多通搜索引入多通搜索,声学模型包括多种噪声模型及其组合物,其N-GRAM模型及其词汇。其次,基于模型的噪声抑制使用通过识别的标签序列选择的多个复合模型,时间对齐。我们使用电子夜莺任务评估了这种方法,并且所提出的方法优于传统方法。

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