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首页> 外文期刊>Journal of Neuroscience Methods >An FPGA-based platform for accelerated offline spike sorting
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An FPGA-based platform for accelerated offline spike sorting

机译:基于FPGA的平台,用于加速脱机尖峰分类

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摘要

There is a push in electrophysiology experiments to record simultaneously from many channels (upwards of 64) over long time periods (many hours). Given the relatively high sampling rates (10-40. kHz) and resolutions (12-24. bits per sample), these experiments accumulate exorbitantly large amounts of data (e.g. 100. GB per experiment), which can be very time-consuming to process. Here, we present an FPGA-based spike-sorting platform that can increase the speed of offline spike sorting by at least 25 times, effectively reducing the time required to sort data from long experiments from several hours to just a few minutes. We attempted to preserve the flexibility of software by implementing several different algorithms in the design, and by providing user control over parameters such as spike detection thresholds. The results of sorting a published benchmark dataset using this hardware tool are shown to be comparable to those using similar software tools.
机译:电生理实验的发展推动了在长时间段(许多小时)内同时从许多通道(多达64个通道)同时进行记录。给定相对较高的采样率(10-40。kHz)和分辨率(每个样本12-24。位),这些实验会积累大量的数据(例如,每个实验100. GB),这可能非常耗时处理。在这里,我们提供了一个基于FPGA的尖峰排序平台,该平台可以将脱机尖峰排序的速度提高至少25倍,从而有效地将长时间实验中的数据排序所需的时间从数小时减少到了几分钟。我们试图通过在设计中实现几种不同的算法并通过对诸如尖峰检测阈值之类的参数提供用户控制来保持软件的灵活性。使用该硬件工具对已发布的基准数据集进行排序的结果显示与使用类似软件工具的结果相当。

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