Liao Yuxi, Wang Yiwen, Zheng Xiaoxiang, Principe Jose C
Qiushi Academy for Advanced Studies and Department of Biomedical Engineering, Zhejiang University, Hangzhou 310027, China.
Annu Int Conf IEEE Eng Med Biol Soc. 2012;2012:2748-51. doi: 10.1109/EMBC.2012.6346533.
Decoding with the important neuron subset has been widely used in brain machine interfaces (BMIs), as an effective strategy to reduce computational complexity. Previous works usually assume stationary of neuron importance, which may not be true according to recent research. We propose to conduct a mutual information evaluation to track the time-varying neuron importance over time. We found worth noting changes both in information amount and space distribution in our experiment. When the method is applied with a Kalman filter, the decoding performance achieve is better (with higher correlation coefficient) than when a fixed subset, which shows that time-varying neuron importance should be considered in adaptive algorithms.
使用重要神经元子集进行解码已在脑机接口(BMI)中广泛应用,作为降低计算复杂度的有效策略。以往的工作通常假定神经元重要性是固定不变的,但近期研究表明情况可能并非如此。我们建议进行互信息评估,以跟踪神经元重要性随时间的变化。在我们的实验中,我们发现信息量和空间分布都有值得注意的变化。当该方法与卡尔曼滤波器一起应用时,所实现的解码性能(相关系数更高)比使用固定子集时更好,这表明在自适应算法中应考虑神经元重要性的时变特性。