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Towards a Unified Framework for De-noising Neural Signals

机译:朝向统一的统一框架,用于脱模神经信号

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摘要

Neural signals provide key information for decision-making processes in multiple disciplines including medicine, engineering, and neuroscience. The correct interpretation of these signals, however, requires substantial processing, especially when the signals exhibit low Signal to Noise Ratio (SNR). Electroencephalographic (EEG) signals are considered among this group and require effective handling of multiple types of artifactual components. Unfortunately, most available de-noising tools are suitable only for offline signal processing. For some artifacts (e.g., EEG motion artifacts), no established method of effective denoising exists for offline or real-time applications. Thus, there is a critical need for methods that can handle artifacts in neural signals with high performance, reliability and real-time capability. Here, we propose novel methods for handling some of the most challenging artifacts that exhibit highly complex dynamics, including motion artifacts. Having the same core sample-adaptive processing tool used for handling different types of artifacts, we present our efforts towards a unified framework for neural data artifact denoising with real-time compatibility.
机译:神经信号提供多学科中的决策过程的关键信息,包括医学,工程和神经科学。然而,对这些信号的正确解释需要大量处理,特别是当信号表现出低信噪比(SNR)时。在该组中考虑脑电图(EEG)信号,需要有效处理多种类型的艺术组件。不幸的是,最可用的脱光工具仅适用于离线信号处理。对于一些伪影(例如,EEG运动伪影),不存在用于离线或实时应用的有效去噪的方法。因此,对可以在具有高性能,可靠性和实时能力的神经信号中处理伪影的方法存在危急。在这里,我们提出了处理一些具有高度复杂动态的最具挑战性的伪像的新方法,包括运动伪影。具有用于处理不同类型的工件的相同核心采样 - 自适应处理工具,我们努力朝着神经数据伪影的统一框架,并具有实时兼容性。

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