Software-hardware cosystem brain interface desig

Wei Cai, Nansong Wu, F. Shi, Jialing Tong
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Abstract

Brain Machine Interface (BMI) is a spike sorting provide a connection between the external behavior and neural behavior of animals. Moreover, the spike sorting is significant for stability of the advanced application. To detect neuronal activity, multichannel recording is one of major methods. This paper proposed a software-hardware co-design framework with a 16- channel neural recording. Two-stage spike detection usually included a threshold method and a nonlinear energy operator (NEO). The spike clustering used the feature extraction. This multichannel spike sorting system algorithm were verified by simulations data and experiments results. The results presented a significant improvement on feature space during spike separation, due to the discrete derivative method.
软硬件生态系统脑接口设计
脑机接口(BMI)是一种为动物的外部行为和神经行为提供联系的脉冲分类方法。此外,尖峰分选对高级应用的稳定性具有重要意义。多通道记录是检测神经元活动的主要方法之一。提出了一种具有16路神经记录的软硬件协同设计框架。两级突波检测通常包括阈值法和非线性能量算子。尖峰聚类采用特征提取。仿真数据和实验结果验证了该算法的有效性。结果表明,由于采用了离散导数方法,在尖峰分离过程中特征空间得到了显著改善。
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