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一种基于竞争学习网络的高效用于尖峰排序的硬件电路。

An Efficient Hardware Circuit for Spike Sorting Based on Competitive Learning Networks.

作者信息

Chen Huan-Yuan, Chen Chih-Chang, Hwang Wen-Jyi

机构信息

Department of Computer Science and Information Engineering, National Taiwan Normal University, Taipei 116, Taiwan.

出版信息

Sensors (Basel). 2017 Sep 28;17(10):2232. doi: 10.3390/s17102232.

Abstract

This study aims to present an effective VLSI circuit for multi-channel spike sorting. The circuit supports the spike detection, feature extraction and classification operations. The detection circuit is implemented in accordance with the nonlinear energy operator algorithm. Both the peak detection and area computation operations are adopted for the realization of the hardware architecture for feature extraction. The resulting feature vectors are classified by a circuit for competitive learning (CL) neural networks. The CL circuit supports both online training and classification. In the proposed architecture, all the channels share the same detection, feature extraction, learning and classification circuits for a low area cost hardware implementation. The clock-gating technique is also employed for reducing the power dissipation. To evaluate the performance of the architecture, an application-specific integrated circuit (ASIC) implementation is presented. Experimental results demonstrate that the proposed circuit exhibits the advantages of a low chip area, a low power dissipation and a high classification success rate for spike sorting.

摘要

本研究旨在提出一种用于多通道尖峰分选的有效超大规模集成电路(VLSI)电路。该电路支持尖峰检测、特征提取和分类操作。检测电路是根据非线性能量算子算法实现的。为了实现特征提取的硬件架构,采用了峰值检测和面积计算操作。所得特征向量由竞争学习(CL)神经网络电路进行分类。CL电路支持在线训练和分类。在所提出的架构中,所有通道共享相同的检测、特征提取、学习和分类电路,以实现低面积成本的硬件实现。还采用了时钟门控技术来降低功耗。为了评估该架构的性能,给出了专用集成电路(ASIC)实现。实验结果表明,所提出的电路在尖峰分选方面具有芯片面积小、功耗低和分类成功率高的优点。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2e0d/5677424/45e0b6625b55/sensors-17-02232-g001.jpg

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