MindSpeech: Continuous Imagined Speech Decoding using High-Density fNIRS and Prompt Tuning for Advanced Human-AI Interaction
In the coming decade, artificial intelligence systems will continue to improve and revolutionise every industry and facet of human life. Designing effective, seamless and symbiotic communication paradigms between humans and AI agents is increasingly important. This paper reports a novel method for h...
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Zusammenfassung: | In the coming decade, artificial intelligence systems will continue to
improve and revolutionise every industry and facet of human life. Designing
effective, seamless and symbiotic communication paradigms between humans and AI
agents is increasingly important. This paper reports a novel method for
human-AI interaction by developing a direct brain-AI interface. We discuss a
novel AI model, called MindSpeech, which enables open-vocabulary, continuous
decoding for imagined speech. This study focuses on enhancing human-AI
communication by utilising high-density functional near-infrared spectroscopy
(fNIRS) data to develop an AI model capable of decoding imagined speech
non-invasively. We discuss a new word cloud paradigm for data collection,
improving the quality and variety of imagined sentences generated by
participants and covering a broad semantic space. Utilising a prompt
tuning-based approach, we employed the Llama2 large language model (LLM) for
text generation guided by brain signals. Our results show significant
improvements in key metrics, such as BLEU-1 and BERT P scores, for three out of
four participants, demonstrating the method's effectiveness. Additionally, we
demonstrate that combining data from multiple participants enhances the decoder
performance, with statistically significant improvements in BERT scores for two
participants. Furthermore, we demonstrated significantly above-chance decoding
accuracy for imagined speech versus resting conditions and the identified
activated brain regions during imagined speech tasks in our study are
consistent with the previous studies on brain regions involved in speech
encoding. This study underscores the feasibility of continuous imagined speech
decoding. By integrating high-density fNIRS with advanced AI techniques, we
highlight the potential for non-invasive, accurate communication systems with
AI in the near future. |
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DOI: | 10.48550/arxiv.2408.05362 |