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首页> 外文期刊>IEEE transactions on biomedical circuits and systems >Frameworks for Efficient Brain-Computer Interfacing
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Frameworks for Efficient Brain-Computer Interfacing

机译:高效脑电脑接口的框架

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One challenge present in brain-computer interface (BCI) circuits is finding a balance between real-time on-chip processing in-vivo and wireless transmission of neural signals for off-chip in-silico processing. This article presents three potential frameworks for investigating an area- and energy-efficient realization of BCI circuits. The first framework performs spike detection on the filtered neural signal on a brain-implantable chip and only transmits detected spikes wirelessly for offline classification and decoding. The second framework performs in-vivo compression of the on-chip detected spikes prior to wireless transmission for substantially reducing wireless transmission overhead. The third framework performs spike sorting in-vivo on the brain-implantable chip to classify detected spikes on-chip and hence, even further reducing wireless data transmission rate at the expense of more signal processing. To alleviate the on-chip computation of spike sorting and also utilizing a more area- and energy-effective design, this work employs, for the first time, to the best of our knowledge, an artificial neural network (ANN) instead of using relatively computationally-intensive conventional spike sorting algorithms. The ASIC implementation results of the designed frameworks are presented and their feasibility for efficient in-vivo processing of neural signals is discussed. Compared to the previously-published BCI systems, the presented frameworks reduce the area and power consumption of implantable circuits.
机译:脑电脑界面(BCI)电路中存在的一个挑战在于在实时片上处理之间的平衡和无线传输的神经信号用于片外处理。本文介绍了三个潜在的框架,用于调查BCI电路的区域和节能实现。第一框架对脑植入芯片上的滤波的神经信号进行尖峰检测,并且仅在离线分类和解码中无线地传输检测到的尖峰。第二框架在无线传输之前执行片上检测到的尖峰的体内压缩,以基本上减少无线传输开销。第三个框架在脑植入的芯片上执行尖峰分类,以分类检测到的芯片,因此,甚至进一步降低了以牺牲更多信号处理的无线数据传输速率。为了减轻尖峰分类的片上计算,也利用更具区域和能源有效的设计,这项工作首次雇用了我们的知识,人工神经网络(ANN)而不是使用相对的计算上密集的传统峰值分类算法。讨论了所设计的框架的ASIC实现结果,并且讨论了它们对神经信号的高效处理的可行性。与先前发表的BCI系统相比,所呈现的框架减少了可植入电路的区域和功耗。

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