L-Sort:片上尖峰排序与高效中位数检测和基于定位的聚类

IF 2.4 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Yuntao Han;Yihan Pan;Xiongfei Jiang;Cristian Sestito;Shady Agwa;Themis Prodromakis;Shiwei Wang
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引用次数: 0

摘要

脉冲分类是解码大规模神经活动的关键过程,从细胞外记录。神经探针的进步促进了大量神经元的记录,增加了通道数,产生了更高的数据量,挑战了当前的片上尖峰分拣器。L-Sort是一种新颖的芯片上尖峰排序方法,具有中位数尖峰检测和基于定位的聚类功能。通过结合中位数近似和提出的增量中位数计算方案,我们的检测模块实现了内存消耗的减少。此外,基于定位的聚类利用几何特征而不是形态特征,从而消除了特征提取过程中包含尖峰波形的内存消耗缓冲。使用Neuropixels数据集的评估表明,L-Sort在减少硬件资源消耗的情况下实现了具有竞争力的排序精度。与最先进的设计相比,FPGA和ASIC(180纳米技术)上的实现在面积和功率效率方面有了显着改善,同时保持了相当的精度。如果归一化到22纳米技术,与使用相同数据集评估的最先进设计相比,我们的设计可以实现大约$\ × 10$的面积和功率效率,精度相似。因此,L-Sort是可植入设备中实时、高通道计数神经处理的一个很有前途的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
L-Sort: On-Chip Spike Sorting With Efficient Median-of-Median Detection and Localization-Based Clustering
Spike sorting is a critical process for decoding large-scale neural activity from extracellular recordings. The advancement of neural probes facilitates the recording of a high number of neurons with an increase in channel counts, arising a higher data volume and challenging the current on-chip spike sorters. This paper introduces L-Sort, a novel on-chip spike sorting solution featuring median-of-median spike detection and localization-based clustering. By combining the median-of-median approximation and the proposed incremental median calculation scheme, our detection module achieves a reduction in memory consumption. Moreover, the localization-based clustering utilizes geometric features instead of morphological features, thus eliminating the memory-consuming buffer for containing the spike waveform during feature extraction. Evaluation using Neuropixels datasets demonstrates that L-Sort achieves competitive sorting accuracy with reduced hardware resource consumption. Implementations on FPGA and ASIC (180 nm technology) demonstrate significant improvements in area and power efficiency compared to state-of-the-art designs while maintaining comparable accuracy. If normalized to 22 nm technology, our design can achieve roughly $\times 10$ area and power efficiency with similar accuracy, compared with the state-of-the-art design evaluated with the same dataset. Therefore, L-Sort is a promising solution for real-time, high-channel-count neural processing in implantable devices.
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