基于大脑认知图和多层潜在增量学习模型的飞行员脑疲劳检测

Fatigue Detection of Pilots’ Brain Through Brains Cognitive Map and Multilayer Latent Incremental Learning Model

IEEE Transactions on Cybernetics · 2021
被引 28
ABS 3

中文导读

提出一种非参数先验的深度和对数多项混合模型,通过大脑能量图逐层提取概率分布,实现飞行员认知状态的高精度检测。

Abstract

This work proposes a nonparametric prior induced deep sum-logarithmic-multinomial mixture (DSLMM) model to detect pilots' cognitive states through the developed brain power map. DSLMM uses multinormal distribution to infer the latent variable of each neuron in the first layer of the network. These latent variables obeyed a sum-logarithmic distribution that is backpropagated to its observation vector and the number of neurons in the next layer. Multinormal distribution is used to segment the extended observation vector to form a matrix associated with the width of the next layer. This work also proposes an adaptive topic-layer stochastic gradient Riemann (ATL-SGR) Markov chain Monte Carlo (MCMC) inference method to learn its global parameters without heuristic assumptions. The experimental results indicate that DSLMM can extract more probability distribution contained in the brain power map layer by layer, and achieve higher pilot cognition detection accuracy.

疲劳检测飞行员认知状态机器学习脑电图分析