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Efficient online feature extraction algorithm for spike sorting in a multichannel FPGA-based neural recording system

机译:基于多通道FPGA的神经记录系统中用于峰排序的高效在线特征提取算法

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A novel feature extraction algorithm for multichannel FPGA-based neural recording systems is presented in this paper. It contains the Dual Vertex Threshold (DVT) and the Minimum Delimitation (MD), which are used for spike detection and feature vector extraction respectively. By reducing the computational complexity of DVT and MD, the difficulty of this algorithm in application is greatly reduced. Based on this characteristic, a multichannel FPGA hardware architecture is implemented in this paper. Using extracted feature vectors, the sorting performance of K-means is as good as that with the PCA-based features. Additionally, the test result shows that the transmission bandwidth is reduced to 1.62% of original data rate.
机译:本文提出了一种新的基于多通道FPGA的神经记录系统的特征提取算法。它包含双顶点阈值(DVT)和最小定界(MD),分别用于峰值检测和特征向量提取。通过降低DVT和MD的计算复杂度,大大降低了该算法在应用中的难度。基于此特性,本文实现了一种多通道FPGA硬件架构。使用提取的特征向量,K均值的排序性能与基于PCA的特征相同。另外,测试结果表明,传输带宽降低到原始数据速率的1.62%。

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