麒麟:统一认知信号重建,连接认知信号和人类语言

Nuwa Xi, Sendong Zhao, Hao Wang, Chi Liu, Bing Qin, Ting Liu
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引用次数: 0

摘要

从认知信号中解码文本刺激(如fMRI)增强了我们对人类语言系统的理解,为构建多功能脑机接口铺平了道路。然而,现有的研究主要集中在从有限的词汇中解码单个单词级的fMRI体积,这对于现实世界的应用来说太理想化了。在本文中,我们提出了fMRI2text,这是第一个旨在连接fMRI时间序列和人类语言的开放词汇任务。此外,为了探索这项新任务的潜力,我们提出了一个基线解决方案,UniCoRN:用于大脑解码的统一认知信号重建。通过重建单个时间点和时间序列,UniCoRN为认知信号(fMRI和EEG)建立了一个鲁棒编码器。利用预训练的语言模型作为解码器,UniCoRN证明了其在各种分裂设置下解码fMRI系列连贯文本的有效性。我们的模型在fmrri2text上达到了34.77%的BLEU分数,在推广到EEG-to-text解码时达到了37.04%的BLEU分数,从而超过了以前的基线。实验结果表明,该方法对fMRI连续体进行解码的可行性,以及对不同认知信号进行统一结构解码的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
UniCoRN: Unified Cognitive Signal ReconstructioN bridging cognitive signals and human language
Decoding text stimuli from cognitive signals (e.g. fMRI) enhances our understanding of the human language system, paving the way for building versatile Brain-Computer Interface. However, existing studies largely focus on decoding individual word-level fMRI volumes from a restricted vocabulary, which is far too idealized for real-world application. In this paper, we propose fMRI2text, the first open-vocabulary task aiming to bridge fMRI time series and human language. Furthermore, to explore the potential of this new task, we present a baseline solution, UniCoRN: the Unified Cognitive Signal ReconstructioN for Brain Decoding. By reconstructing both individual time points and time series, UniCoRN establishes a robust encoder for cognitive signals (fMRI & EEG). Leveraging a pre-trained language model as decoder, UniCoRN proves its efficacy in decoding coherent text from fMRI series across various split settings. Our model achieves a 34.77% BLEU score on fMRI2text, and a 37.04% BLEU when generalized to EEG-to-text decoding, thereby surpassing the former baseline. Experimental results indicate the feasibility of decoding consecutive fMRI volumes, and the effectiveness of decoding different cognitive signals using a unified structure.
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