基于压缩感知和机器学习的fpga脑机接口

R. Shrivastwa, V. Pudi, A. Chattopadhyay
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引用次数: 17

摘要

脑皮质电图(ECoG)是一种用于记录大脑皮层活动的电生理监测方法。它已成为脑机接口(BCI)中一种很有前途的记录技术。在基于健康的物联网和身体区域网络的新应用场景中,压缩这些信号对于节省功耗和带宽至关重要。然而,这项任务尤其具有挑战性,因为ECoG信号在时域和频域都不可压缩。为此,建议采用块稀疏贝叶斯学习(BSBL)技术对压缩后的脑电图和心电信号进行重建,但这种方法的计算量很大。此外,考虑到现代计算系统的异构性,需要仔细的设计分区,以最有效地评估已部署体系结构上可用的特定资源。在本文中,我们提出利用压缩感知和神经网络的组合来分别压缩和重建ECoG信号。对于神经网络的选择,提出了一种带有随机梯度下降求解器的多层感知器回归器。对于一个样本系统,我们表明,在使用一个实际的中型数据集训练后,网络的压缩比为50%,重构准确率为89.85%。总体而言,结果表明,最有效的系统实现是将CPU和现场可编程门阵列(FPGA)相结合的异构体系结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An FPGA-Based Brain Computer Interfacing Using Compressive Sensing and Machine Learning
Electrocorticography (ECoG) is a type of electrophysiological monitoring useful for recording the activity from the cerebral cortex. It has emerged as a promising recording technique in brain-computer interfaces (BCI). Compression of these signals is essential for saving power and bandwidth in the novel application scenarios of Health-based IoT and Body Area Networks. However, this task is particularly challenging since, ECoG signals are not compressible either in time domain or in frequency domain. To that end, Block Sparse Bayesian Learning (BSBL) techniques were suggested for the reconstruction of compressed EEG and ECG signals, which is however, computationally demanding. Furthermore, given the heterogeneity in modern computing systems, careful design partitioning is required to most effectively evaluate the particular resources available on the deployed architecture. In this paper, we propose to utilise a combination of compressive sensing and neural network for the compression and reconstruction of ECoG signals, respectively. For the choice of the neural network, a multi-layer perceptron regressor with a stochastic gradient descent solver is developed. For a sample system, we show that the network has a compression ratio of 50%, and reconstruction accuracy of 89.85% after training with a practical, medium-sized dataset. In general, the results show that the most efficient system implementation is a heterogeneous architecture combining a CPU and a fieldprogrammable gate array (FPGA).
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