首页> 外文会议>International Symposium on Brain, Vision, and Artificial Intelligence(BVAI 2005); 20051019-21; Naples(IT) >Unsupervised Recognition of Neuronal Discharge Waveforms for On-line Real-Time Operation
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Unsupervised Recognition of Neuronal Discharge Waveforms for On-line Real-Time Operation

机译:在线实时操作的神经元放电波形的无监督识别

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Fast and reliable unsupervised spike sorting is necessary for electrophysiological applications that require critical time operations (e.g., recordings during human neurosurgery) or management of large amount of data (e.g., recordings from large microelectrode arrays in behaving animals). We present an algorithm that can recognize the waveform of neural traces corresponding to extracellular action potentials. Spike shapes are expressed in a phase space spanned by the first and second derivatives of the raw signal trace. The performance of the algorithm is tested against artificially generated noisy data sets. We present the main features of the algorithm aimed to on-line real-time operations.
机译:对于需要关键时间操作(例如,人类神经外科手术期间的记录)或管理大量数据(例如,来自行为动物中大型微电极阵列的记录)的电生理应用而言,快速可靠的无监督尖峰分拣是必不可少的。我们提出了一种算法,可以识别与细胞外动作电位相对应的神经迹线的波形。尖峰形状在原始信号迹线的一阶和二阶导数所跨越的相空间中表示。针对人工生成的噪声数据集测试了算法的性能。我们介绍了针对在线实时操作的算法的主要功能。

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