SDCLASFeb 1, 2018

Phonetic and Graphemic Systems for Multi-Genre Broadcast Transcription

arXiv:1802.00254v121 citations
Originality Synthesis-oriented
AI Analysis

This work addresses speech recognition accuracy for broadcast transcription, but it is incremental as it builds on existing deep-learning methods.

The paper compared phonetic and graphemic acoustic models for English multi-genre broadcast transcription, finding that long-span temporal history and system combination reduced performance differences, with combined systems yielding consistent gains.

State-of-the-art English automatic speech recognition systems typically use phonetic rather than graphemic lexicons. Graphemic systems are known to perform less well for English as the mapping from the written form to the spoken form is complicated. However, in recent years the representational power of deep-learning based acoustic models has improved, raising interest in graphemic acoustic models for English, due to the simplicity of generating the lexicon. In this paper, phonetic and graphemic models are compared for an English Multi-Genre Broadcast transcription task. A range of acoustic models based on lattice-free MMI training are constructed using phonetic and graphemic lexicons. For this task, it is found that having a long-span temporal history reduces the difference in performance between the two forms of models. In addition, system combination is examined, using parameter smoothing and hypothesis combination. As the combination approaches become more complicated the difference between the phonetic and graphemic systems further decreases. Finally, for all configurations examined the combination of phonetic and graphemic systems yields consistent gains.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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