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Probabilistic neural network based motor cortical decoding method and hardware implementation

机译:基于概率神经网络的运动皮层解码方法及硬件实现

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Probabilistic neural network (PNN), a kind of radial basis networks, is usually used for classification problems. It has the advantages of much faster training process and more accurate results using the minimum Bayesian risk criterion compared with other neural networks. In this paper, we use this neural network in brain-machine interface for decoding neural ensemble activity. Rats were trained to perform a lever pressing task for water rewards and implanted a chronic 16-channel microelectrode array in the primary motor cortex. The multi-channel neural activity and pressure signal of the lever was recorded simultaneously. In the PNN architecture, input vector was modified and contained not only current neuronal activity but also previously estimated pressure value which was taken as one input. This modified PNN was implemented in Matlab and obtained a good performance. Furthermore, field-programmable gate array (FPGA) based hardware implementation of PNN were developed and tested with real data. Because of the parallel computation ability and optimized architecture of FPGA, the results are as accurate as the realization of Matlab-based but the running speed is much faster. This indicates that the performance of current FPGA is competent for portable BMI applications.
机译:概率神经网络(PNN),一种径向基础网络,通常用于分类问题。与其他神经网络相比,它具有更快的培训过程和更准确的结果,更准确的结果更准确。在本文中,我们在脑机界面中使用了这个神经网络,用于解码神经系列活动。训练大鼠以进行水卷的杠杆按压任务,并植入初级电动机皮质中的慢性16通道微电极阵列。同时记录杠杆的多通道神经活动和压力信号。在PNN架构中,输入向量被修改,并且不仅包含当前神经元活动,而且包含作为一个输入的先前估计的压力值。这种改进的PNN在MATLAB中实施,并获得了良好的性能。此外,使用实际数据开发和测试基于PNN的基于PNN的现场可编程门阵列(FPGA)的硬件实现。由于平行计算能力和FPGA的优化架构,结果与基于MATLAB的实现一样准确,但运行速度更快。这表明当前FPGA的性能是便携式BMI应用的能力。

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