Papers by Payal Mohapatra

1 papers
Can LLMs Understand Unvoiced Speech? Exploring EMG-to-Text Conversion with LLMs (2025.acl-short)

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Challenge: Unvoiced electromyography (EMG) is an effective communication tool for individuals unable to produce vocal speech.
Approach: They propose an EMG adaptor module that maps EMG features to an LLM's input space and achieves an average word error rate of 0.49 on a closed-vocabulary unvoiced EMG-to-text task.
Outcome: The proposed module achieves an average word error rate of 0.49 on a closed-vocabulary unvoiced EMG-to-text task.

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