脑电波解释的脑电图传感器人工神经网络:脑观察者-指示器发展挑战

Nicholas Polosky, Jithin Jagannath, Daniel O'Connor, Hanne M. Saarinen, Svetlana Foulke
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引用次数: 1

摘要

本文报道了一种基于脑电图(EEG)的个性化设备的发展所面临的挑战和机遇,该设备用于监测与被观察者的大规模神经动力学相关的大脑活动,并向观察者提供相关的反馈。所设想的设备解释信号并将其分类为典型响应类。这可以使观察者和佩戴该设备的参与者之间进行无言的互动。该框架不同于脑机接口(BCI)框架,因为它侧重于与人类观察者相关的指标,即脑-观察者-服务器-指标(BOI)。传感器检测大脑的静息状态与相关的模式,区域之间的同步,以及响应认知事件的频谱变化。认知事件会导致相关电位模式的显著变化。如果模式-活动机制得到表征和识别,那么对这些模式的识别将具有广泛的应用基础。该项目的范围包括开发一个智能交互支持系统BOI,依靠脑电图工具包和人工神经网络进行个性化。目标是开发软件,支持需要反馈(即培训)的应用程序,以及一种获取相关大脑活动统计数据的方法,用于工程研究,以改善信号采集和设备性能。项目初步阶段的结果令人鼓舞,但也表明了必须解决的多重挑战,包括在减少噪音和分类软件的复杂性之间进行权衡,定义类别和识别类别和模式,以及开发有效的训练数据集获取策略。
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Artificial neural network with electroencephalogram sensors for brainwave interpretation: brain-observer-indicator development challenges
This paper reports on challenges and opportunities associated with the development of an electroencephalogram (EEG) based personalized device for monitoring of brain activities pertaining large scale neural dynamics in the observed and providing relevant feedback to the observer. The envisioned device interprets signals and categorizes them on classes of typical responses. This could enable a speechless interaction between an observer and a participant wearing the device. This framework is different from the brain-computer-interface (BCI) framework as it focuses on indicators relevant to the human observer, brain-observer-indicator (BOI). Sensors detect resting states of the brain with associated patterns, synchrony between regions, and spectral changes in response to a cognitive event. A cognitive event results in notable changes in the associated patterns of electrical potentials. Recognition of these patterns has a broad application base, if the pattern-activity mechanism is characterized and recognized. The scope of the project includes development of a smart interaction support system BOI, relying on utilization of an EEG toolkit and an artificial neural network for personalization. The objective is to develop software that will support applications requiring feedback (i.e., training), along with a method for obtaining statistical data on the associated brain activity for engineering studies geared to improve signal acquisition and device performance. The findings from preliminary stages of the project are encouraging but indicate multiple challenges that must be addressed including a trade between a reduction of noise and complexity of classification software, definition of classes and recognition of classes and patterns, and development of an effective training data set acquisition strategy.
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