Gil Ayache, Menachem Pirchi, Aviv Navon, Aviv Shamsian, Gill Hetz, Joseph Keshet
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引用次数: 0
摘要
将命名实体识别(NER)与自动语音识别(ASR)相结合,可以大大提高转录的准确性和信息量。在本文中,我们介绍了 WhisperNER,这是一种新型模型,可实现语音转录和实体识别的联合。WhisperNER 支持开放式 NER,可在推理时识别多样化和不断发展的实体。基于开放式 NER 研究的最新进展,我们用合成语音样本增强了一个大型合成数据集。这样,我们就能在大量带有不同 NER 标记的示例上训练 WhisperNER。在训练过程中,模型会受到 NER 标签的提示,并经过优化以输出转录语句和相应的标记实体。为了评估 WhisperNER,我们为常用的 NER 基准生成了合成语音,并为现有的 ASR 数据集标注了开放的 NER 标记。实验证明,WhisperNER 在域外开放式 NER 和监督微调方面的表现都优于自然基准。
WhisperNER: Unified Open Named Entity and Speech Recognition
Integrating named entity recognition (NER) with automatic speech recognition
(ASR) can significantly enhance transcription accuracy and informativeness. In
this paper, we introduce WhisperNER, a novel model that allows joint speech
transcription and entity recognition. WhisperNER supports open-type NER,
enabling recognition of diverse and evolving entities at inference. Building on
recent advancements in open NER research, we augment a large synthetic dataset
with synthetic speech samples. This allows us to train WhisperNER on a large
number of examples with diverse NER tags. During training, the model is
prompted with NER labels and optimized to output the transcribed utterance
along with the corresponding tagged entities. To evaluate WhisperNER, we
generate synthetic speech for commonly used NER benchmarks and annotate
existing ASR datasets with open NER tags. Our experiments demonstrate that
WhisperNER outperforms natural baselines on both out-of-domain open type NER
and supervised finetuning.