首页> 外文会议>International Work-Conference on the Interplay Between Natural and Artificial Computation(IWINAC 2005); 20050615-18; Las Palmas(ES) >Separation of Extracellular Spikes: When Wavelet Based Methods Outperform the Principle Component Analysis
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Separation of Extracellular Spikes: When Wavelet Based Methods Outperform the Principle Component Analysis

机译:细胞外突峰的分离:基于小波的方法优于主成分分析时

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Spike separation is a basic prerequisite for analyzing of the cooperative neural behavior and neural code when registering extracellu-larly. Final performance of any spike sorting method is basically defined by the quality of the discriminative features extracted from the spike waveforms. Here we discuss two features extraction approaches: the Principal Component Analysis (PCA), and methods based on the Wavelet Transform (WT). We show that the WT based methods outperform the PCA only when properly tuned to the data, otherwise their results may be comparable or even worse. Then we present a novel method of spike features extraction based on a combination of the PCA and continuous WT. Our approach allows automatic tuning of the wavelet part of the method by the use of knowledge obtained from the PCA. To illustrate the methods strength and weakness we provide comparative examples of their performances using simulated and experimental data.
机译:尖峰分离是胞外注册时分析协同神经行为和神经代码的基本前提。基本上,任何尖峰分类方法的最终性能都取决于从尖峰波形中提取的辨别特征的质量。在这里,我们讨论两种特征提取方法:主成分分析(PCA)和基于小波变换(WT)的方法。我们表明,基于WT的方法仅在正确调整到数据后才优于PCA,否则它们的结果可能相当甚至更差。然后,我们提出了一种基于PCA和连续WT相结合的峰值特征提取的新方法。我们的方法允许通过使用从PCA获得的知识来自动调整方法的小波部分。为了说明方法的优缺点,我们使用模拟和实验数据提供了其性能的比较示例。

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