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Analysis and processing of in-vivo neural signal for artifact detection and removal

机译:用于伪影检测和去除的体内神经信号的分析和处理

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This paper analyses different types of artifacts that appear in neural recording experiments and thus a method is proposed to detect and remove artifacts as a part of preprocessing procedures before information decoding. Through modeling and data analysis, we reason that artifacts have different spectrum statistics compared with field potentials and spikes and the frequency bands of 150–400 Hz and >5 kHz are the most prospective regions to detect artifacts. A synthesized database based on recorded neural data and manually labeled artifacts has been built to allow quantitative evaluations of the proposed algorithm. Testing results have shown that over >80% positive detection ratio is achievable for artifacts with magnitude comparable to neural spikes. Quantitative signal-to-distortion ratio (SDR) simulation has shown that it is possible to have 10–30dB SDR improvement at waveform segments that contain artifacts.
机译:本文分析了神经记录实验中出现的不同类型的伪像,因此提出了一种在信息解码之前作为预处理程序的一部分来检测和消除伪像的方法。通过建模和数据分析,我们认为与现场电势和尖峰信号相比,伪像具有不同的频谱统计,并且150-400 Hz和> 5 kHz的频带是检测伪像的最有希望的区域。基于记录的神经数据和人工标记的人工产物的综合数据库已建立,可以对提出的算法进行定量评估。测试结果表明,对于数量级可与神经尖峰相当的伪像,可以实现超过80%的阳性检测率。定量信号失真比(SDR)模拟表明,在包含伪影的波形段上,可以将SDR提高10–30dB。

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