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Hidden Markov Models for Reading Words from the Human Brain

机译:从人脑读取单词的隐马尔可夫模型

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Recent work has shown that it is possible to reconstruct perceived stimuli from human brain activity. At the same time, studies have indicated that perception and imagery share the same neural substrate. This could bring cognitive brain computer interfaces (BCIs) that are driven by direct readout of mental images within reach. A desirable feature of such BCIs is that subjects gain the ability to construct arbitrary messages. In this study, we explore whether words can be generated from neural activity patterns that reflect the perception of individual characters. To this end, we developed a graphical model where low-level properties of individual characters are represented via Gaussian mixture models and high-level properties reflecting character co-occurrences are represented via a hidden Markov model. With this work we provide the initial outline of a model that could allow the development of cognitive BCIs driven by direct decoding of internally generated messages.
机译:最近的工作表明,可以从人脑活动中重建感知到的刺激。同时,研究表明,感知和图像共享相同的神经底物。这可能会带来由直接读取心理图像驱动的认知脑计算机接口(BCI)。这种BCI的一个理想功能是让受试者获得构造任意消息的能力。在这项研究中,我们探讨了是否可以通过反映单个字符感知的神经活动模式生成单词。为此,我们开发了一个图形模型,其中通过高斯混合模型表示单个字符的低级属性,并通过隐藏的马尔可夫模型表示反映字符共现的高级属性。通过这项工作,我们提供了一个模型的初始轮廓,该模型可以允许由内部生成的消息的直接解码驱动的认知BCI的发展。

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