首页> 外文会议>Proceedings of the 14th ACM/IEEE international symposium on Low power electronics and design >A programmable implementation of neural signal processing on a smartdust for brain-computer interfaces
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A programmable implementation of neural signal processing on a smartdust for brain-computer interfaces

机译:用于脑机接口的智能灰尘上神经信号处理的可编程实现

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Brain-computer interfaces (BCIs) offer tremendous promise for improving the quality of life for disabled individuals. BCIs use spike sorting to identify the source of each neural firing. To date, spike sorting has been performed using off-chip analysis, which requires a wired connection penetrating the skull to a bulky external power/processing unit, or ASIC designs, which lack the programmability to perform different algorithms and upgrades. In this research, we propose and test the feasibility of performing on-chip, real-time spike sorting on a programmable smartdust, including feature extraction, classification, compression, and wireless transmission. A detailed power/performance trade-off analysis using DVFS is presented. Our experimental results show that the execution time and power density meet the requirements to perform real-time spike sorting and wireless transmission on a single neural channel.
机译:脑机接口(BCI)为改善残疾人的生活质量提供了巨大的希望。 BCI使用尖峰排序来识别每个神经激发的来源。迄今为止,尖峰排序已使用片外分析进行,这需要通过有线连接将头骨穿透到庞大的外部电源/处理单元或ASIC设计,而ASIC设计缺乏执行不同算法和升级的可编程性。在这项研究中,我们提出并测试了在可编程智能尘埃上执行片上实时峰值分类的可行性,包括特征提取,分类,压缩和无线传输。提出了使用DVFS进行详细的功率/性能折衷分析。我们的实验结果表明,执行时间和功率密度符合在单个神经通道上执行实时尖峰排序和无线传输的要求。

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