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首页> 外文期刊>Journal of Neuroscience Methods >Hierarchical Adaptive Means (HAM) clustering for hardware-efficient, unsupervised and real-time spike sorting
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Hierarchical Adaptive Means (HAM) clustering for hardware-efficient, unsupervised and real-time spike sorting

机译:分层自适应均值(HAM)聚类,可实现硬件有效,无监督且实时的尖峰排序

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摘要

This work presents a novel unsupervised algorithm for real-time adaptive clustering of neural spike data (spike sorting). The proposed Hierarchical Adaptive Means (HAM) clustering method combines centroid-based clustering with hierarchical cluster connectivity to classify incoming spikes using groups of clusters. It is described how the proposed method can adaptively track the incoming spike data without requiring any past history, iteration or training and autonomously determines the number of spike classes. Its performance (classification accuracy) has been tested using multiple datasets (both simulated and recorded) achieving a near-identical accuracy compared to /c-means (using 10-iterations and provided with the number of spike classes). Also, its robustness in applying to different feature extraction methods has been demonstrated by achieving classification accuracies above 80% across multiple datasets. Last but crucially, its low complexity, that has been quantified through both memory and computation requirements makes this method hugely attractive for future hardware implementation.
机译:这项工作提出了一种新的无监督算法,用于神经峰值数据的实时自适应聚类(峰值排序)。提出的分层自适应均值(HAM)聚类方法将基于质心的聚类与分层聚类连接性相结合,以使用聚类组对传入的峰值进行分类。描述了所提出的方法如何能够自适应地跟踪传入的尖峰数据,而不需要任何过去的历史,迭代或训练,并自动确定尖峰类别的数量。它的性能(分类精度)已使用多个数据集(模拟和记录)进行了测试,与/ c-means(使用10次迭代并提供了尖峰类别的数量)相比,达到了几乎相同的精度。此外,通过在多个数据集中实现80%以上的分类精度,证明了其在应用于不同特征提取方法中的鲁棒性。最后但至关重要的是,它的低复杂度(已通过内存和计算需求进行了量化)使该方法对于将来的硬件实现具有极大的吸引力。

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